| import tensorflow as tf |
|
|
|
|
| def get_initializer(init_method): |
| if init_method == 'xavier_normal': |
| initializer = tf.glorot_normal_initializer() |
| elif init_method == 'xavier_uniform': |
| initializer = tf.glorot_uniform_initializer() |
| elif init_method == 'he_normal': |
| initializer = tf.keras.initializers.he_normal() |
| elif init_method == 'he_uniform': |
| initializer = tf.keras.initializers.he_uniform() |
| elif init_method == 'lecun_normal': |
| initializer = tf.keras.initializers.lecun_normal() |
| elif init_method == 'lecun_uniform': |
| initializer = tf.keras.initializers.lecun_uniform() |
| else: |
| raise Exception('Unknown initializer:', init_method) |
| return initializer |
|
|
|
|
| def lrelu(x, leak=0.2, name="lrelu", alt_relu_impl=False): |
| with tf.variable_scope(name) as scope: |
| if alt_relu_impl: |
| f1 = 0.5 * (1 + leak) |
| f2 = 0.5 * (1 - leak) |
| return f1 * x + f2 * abs(x) |
| else: |
| return tf.maximum(x, leak * x) |
|
|
|
|
| def batchnorm(input, name='batch_norm', init_method=None): |
| if init_method is not None: |
| initializer = get_initializer(init_method) |
| else: |
| initializer = tf.random_normal_initializer(1.0, 0.02, dtype=tf.float32) |
|
|
| with tf.variable_scope(name): |
| |
| input = tf.identity(input) |
|
|
| channels = input.get_shape()[3] |
| offset = tf.get_variable("offset", [channels], dtype=tf.float32, initializer=tf.zeros_initializer()) |
| scale = tf.get_variable("scale", [channels], dtype=tf.float32, |
| initializer=initializer) |
| mean, variance = tf.nn.moments(input, axes=[0, 1, 2], keep_dims=False) |
| variance_epsilon = 1e-5 |
| normalized = tf.nn.batch_normalization(input, mean, variance, offset, scale, variance_epsilon=variance_epsilon) |
| return normalized |
|
|
|
|
| def layernorm(input, name='layer_norm', init_method=None): |
| if init_method is not None: |
| initializer = get_initializer(init_method) |
| else: |
| initializer = tf.random_normal_initializer(1.0, 0.02, dtype=tf.float32) |
|
|
| with tf.variable_scope(name): |
| n_neurons = input.get_shape()[3] |
| offset = tf.get_variable("offset", [n_neurons], dtype=tf.float32, initializer=tf.zeros_initializer()) |
| scale = tf.get_variable("scale", [n_neurons], dtype=tf.float32, |
| initializer=initializer) |
| offset = tf.reshape(offset, [1, 1, -1]) |
| scale = tf.reshape(scale, [1, 1, -1]) |
| mean, variance = tf.nn.moments(input, axes=[1, 2, 3], keep_dims=True) |
| variance_epsilon = 1e-5 |
| normalized = tf.nn.batch_normalization(input, mean, variance, offset, scale, variance_epsilon=variance_epsilon) |
| return normalized |
|
|
|
|
| def instance_norm(input, name="instance_norm", init_method=None): |
| if init_method is not None: |
| initializer = get_initializer(init_method) |
| else: |
| initializer = tf.random_normal_initializer(1.0, 0.02, dtype=tf.float32) |
|
|
| with tf.variable_scope(name): |
| depth = input.get_shape()[3] |
| scale = tf.get_variable("scale", [depth], initializer=initializer) |
| offset = tf.get_variable("offset", [depth], initializer=tf.constant_initializer(0.0)) |
| mean, variance = tf.nn.moments(input, axes=[1, 2], keep_dims=True) |
| epsilon = 1e-5 |
| inv = tf.rsqrt(variance + epsilon) |
| normalized = (input - mean) * inv |
| return scale * normalized + offset |
|
|
|
|
| def linear1d(inputlin, inputdim, outputdim, name="linear1d", init_method=None): |
| if init_method is not None: |
| initializer = get_initializer(init_method) |
| else: |
| initializer = None |
|
|
| with tf.variable_scope(name) as scope: |
| weight = tf.get_variable("weight", [inputdim, outputdim], initializer=initializer) |
| bias = tf.get_variable("bias", [outputdim], dtype=tf.float32, initializer=tf.constant_initializer(0.0)) |
| return tf.matmul(inputlin, weight) + bias |
|
|
|
|
| def general_conv2d(inputconv, output_dim=64, filter_height=4, filter_width=4, stride_height=2, stride_width=2, |
| stddev=0.02, padding="SAME", name="conv2d", do_norm=True, norm_type='instance_norm', do_relu=True, |
| relufactor=0, is_training=True, init_method=None): |
| if init_method is not None: |
| initializer = get_initializer(init_method) |
| else: |
| initializer = tf.truncated_normal_initializer(stddev=stddev) |
|
|
| with tf.variable_scope(name) as scope: |
| conv = tf.contrib.layers.conv2d(inputconv, output_dim, [filter_width, filter_height], |
| [stride_width, stride_height], padding, activation_fn=None, |
| weights_initializer=initializer, |
| biases_initializer=tf.constant_initializer(0.0)) |
| if do_norm: |
| if norm_type == 'instance_norm': |
| conv = instance_norm(conv, init_method=init_method) |
| |
| |
| elif norm_type == 'batch_norm': |
| |
| conv = tf.contrib.layers.batch_norm(conv, decay=0.9, is_training=is_training, updates_collections=None, |
| epsilon=1e-5, center=True, scale=True, scope="batch_norm") |
| elif norm_type == 'layer_norm': |
| |
| conv = tf.contrib.layers.layer_norm(conv, center=True, scale=True, scope='layer_norm') |
|
|
| if do_relu: |
| if relufactor == 0: |
| conv = tf.nn.relu(conv, "relu") |
| else: |
| conv = lrelu(conv, relufactor, "lrelu") |
|
|
| return conv |
|
|
|
|
| def generative_cnn_c3_encoder(inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| tensor_x = inputs |
|
|
| with tf.variable_scope(tf.get_variable_scope(), reuse=tf.AUTO_REUSE) as scope: |
| tensor_x = general_conv2d(tensor_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| tensor_x_sp = tensor_x |
|
|
| tensor_x = tf.reshape(tensor_x, (-1, 256 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 256 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_c3_encoder_deeper(inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| tensor_x = inputs |
|
|
| with tf.variable_scope(tf.get_variable_scope(), reuse=tf.AUTO_REUSE) as scope: |
| tensor_x = general_conv2d(tensor_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| tensor_x_sp = tensor_x |
|
|
| tensor_x = tf.reshape(tensor_x, (-1, 512 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 512 * 4 * 4, 512, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_c3_encoder_combine33(local_inputs, global_inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| local_x = local_inputs |
| global_x = global_inputs |
|
|
| with tf.variable_scope('Local_Encoder', reuse=tf.AUTO_REUSE): |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| with tf.variable_scope('Global_Encoder', reuse=tf.AUTO_REUSE): |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| tensor_x = tf.concat([local_x, global_x], axis=-1) |
|
|
| with tf.variable_scope('Combined_Encoder', reuse=tf.AUTO_REUSE): |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
| tensor_x_sp = tensor_x |
|
|
| tensor_x = tf.reshape(tensor_x, (-1, 512 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_c3_encoder_combine43(local_inputs, global_inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| local_x = local_inputs |
| global_x = global_inputs |
|
|
| with tf.variable_scope('Local_Encoder', reuse=tf.AUTO_REUSE): |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| with tf.variable_scope('Global_Encoder', reuse=tf.AUTO_REUSE): |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| tensor_x = tf.concat([local_x, global_x], axis=-1) |
|
|
| with tf.variable_scope('Combined_Encoder', reuse=tf.AUTO_REUSE): |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
| tensor_x_sp = tensor_x |
|
|
| tensor_x = tf.reshape(tensor_x, (-1, 512 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_c3_encoder_combine53(local_inputs, global_inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| local_x = local_inputs |
| global_x = global_inputs |
|
|
| with tf.variable_scope('Local_Encoder', reuse=tf.AUTO_REUSE): |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
|
|
| with tf.variable_scope('Global_Encoder', reuse=tf.AUTO_REUSE): |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
|
|
| tensor_x = tf.concat([local_x, global_x], axis=-1) |
|
|
| with tf.variable_scope('Combined_Encoder', reuse=tf.AUTO_REUSE): |
| tensor_x_sp = tensor_x |
| tensor_x = tf.reshape(tensor_x, (-1, 1024 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 1024 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_c3_encoder_combineFC(local_inputs, global_inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| local_x = local_inputs |
| global_x = global_inputs |
|
|
| with tf.variable_scope('Local_Encoder', reuse=tf.AUTO_REUSE): |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
|
|
| local_x = tf.reshape(local_x, (-1, 512 * 4 * 4)) |
| local_x = linear1d(local_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| local_x = tf.nn.dropout(local_x, drop_keep_prob) |
|
|
| with tf.variable_scope('Global_Encoder', reuse=tf.AUTO_REUSE): |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
|
|
| global_x = tf.reshape(global_x, (-1, 512 * 4 * 4)) |
| global_x = linear1d(global_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| global_x = tf.nn.dropout(global_x, drop_keep_prob) |
|
|
| tensor_x_sp = None |
| tensor_x = tf.concat([local_x, global_x], axis=-1) |
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_c3_encoder_combineFC_jointAttn(local_inputs, global_inputs, is_training=True, drop_keep_prob=0.5, |
| init_method=None, combine_manner='attn'): |
| local_x = local_inputs |
| global_x = global_inputs |
|
|
| with tf.variable_scope('Local_Encoder', reuse=tf.AUTO_REUSE): |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| share_x = local_x |
|
|
| with tf.variable_scope('Attn_branch', reuse=tf.AUTO_REUSE): |
| attn_x = general_conv2d(share_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| attn_x = general_conv2d(attn_x, 32, filter_height=1, filter_width=1, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| attn_x = general_conv2d(attn_x, 1, filter_height=1, filter_width=1, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| attn_map = tf.nn.sigmoid(attn_x) |
|
|
| if combine_manner == 'attn': |
| attn_feat = attn_map * share_x + share_x |
| else: |
| raise Exception('Unknown combine_manner', combine_manner) |
|
|
| local_x = general_conv2d(attn_feat, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
|
|
| local_x = tf.reshape(local_x, (-1, 512 * 4 * 4)) |
| local_x = linear1d(local_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| local_x = tf.nn.dropout(local_x, drop_keep_prob) |
|
|
| with tf.variable_scope('Global_Encoder', reuse=tf.AUTO_REUSE): |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
|
|
| global_x = tf.reshape(global_x, (-1, 512 * 4 * 4)) |
| global_x = linear1d(global_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| global_x = tf.nn.dropout(global_x, drop_keep_prob) |
|
|
| tensor_x_sp = None |
| tensor_x = tf.concat([local_x, global_x], axis=-1) |
| return tensor_x, tensor_x_sp, attn_map |
|
|
|
|
| def generative_cnn_c3_encoder_combineFC_sepAttn(local_inputs, global_inputs, is_training=True, drop_keep_prob=0.5, |
| init_method=None, combine_manner='attn'): |
| local_x = local_inputs |
| global_x = global_inputs |
|
|
| with tf.variable_scope('Attn_branch', reuse=tf.AUTO_REUSE): |
| attn_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| attn_x = general_conv2d(attn_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| attn_x = general_conv2d(attn_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| attn_x = general_conv2d(attn_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| attn_x = general_conv2d(attn_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| attn_x = general_conv2d(attn_x, 32, filter_height=1, filter_width=1, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| attn_x = general_conv2d(attn_x, 1, filter_height=1, filter_width=1, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
| attn_map = tf.nn.sigmoid(attn_x) |
|
|
| with tf.variable_scope('Local_Encoder', reuse=tf.AUTO_REUSE): |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| local_x = general_conv2d(local_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| if combine_manner == 'attn': |
| attn_feat = attn_map * local_x + local_x |
| elif combine_manner == 'channel': |
| attn_feat = tf.concat([local_x, attn_map], axis=-1) |
| else: |
| raise Exception('Unknown combine_manner', combine_manner) |
|
|
| local_x = general_conv2d(attn_feat, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| local_x = general_conv2d(local_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
|
|
| local_x = tf.reshape(local_x, (-1, 512 * 4 * 4)) |
| local_x = linear1d(local_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| local_x = tf.nn.dropout(local_x, drop_keep_prob) |
|
|
| with tf.variable_scope('Global_Encoder', reuse=tf.AUTO_REUSE): |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| global_x = general_conv2d(global_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| global_x = general_conv2d(global_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
|
|
| global_x = tf.reshape(global_x, (-1, 512 * 4 * 4)) |
| global_x = linear1d(global_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| global_x = tf.nn.dropout(global_x, drop_keep_prob) |
|
|
| tensor_x_sp = None |
| tensor_x = tf.concat([local_x, global_x], axis=-1) |
| return tensor_x, tensor_x_sp, attn_map |
|
|
|
|
| def generative_cnn_c3_encoder_deeper13(inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| tensor_x = inputs |
|
|
| with tf.variable_scope(tf.get_variable_scope(), reuse=tf.AUTO_REUSE) as scope: |
| tensor_x = general_conv2d(tensor_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
| tensor_x_sp = tensor_x |
|
|
| tensor_x = tf.reshape(tensor_x, (-1, 512 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_c3_encoder_deeper13_attn(inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| tensor_x = inputs |
|
|
| with tf.variable_scope(tf.get_variable_scope(), reuse=tf.AUTO_REUSE) as scope: |
| tensor_x = general_conv2d(tensor_x, 32, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 32, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_1_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 64, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_2_2", init_method=init_method) |
|
|
| tensor_x = self_attention(tensor_x, 64) |
|
|
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_3_3", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_4_3", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, |
| is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, filter_height=3, filter_width=3, stride_height=1, stride_width=1, |
| is_training=is_training, name="CNN_ENC_5_3", init_method=init_method) |
| tensor_x_sp = tensor_x |
|
|
| tensor_x = tf.reshape(tensor_x, (-1, 512 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 512 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_encoder(inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| tensor_x = inputs |
|
|
| with tf.variable_scope(tf.get_variable_scope(), reuse=tf.AUTO_REUSE) as scope: |
| tensor_x = general_conv2d(tensor_x, 32, is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 32, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_1_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_2_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 128, is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_3_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 256, is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_4_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_5_2", init_method=init_method) |
| tensor_x_sp = tensor_x |
|
|
| tensor_x = tf.reshape(tensor_x, (-1, 256 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 256 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_encoder_deeper(inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| tensor_x = inputs |
|
|
| with tf.variable_scope(tf.get_variable_scope(), reuse=tf.AUTO_REUSE) as scope: |
| tensor_x = general_conv2d(tensor_x, 32, is_training=is_training, name="CNN_ENC_1", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 32, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_1_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, is_training=is_training, name="CNN_ENC_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_2_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 128, is_training=is_training, name="CNN_ENC_3", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_3_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 256, is_training=is_training, name="CNN_ENC_4", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_4_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, is_training=is_training, name="CNN_ENC_5", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 512, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_5_2", init_method=init_method) |
| tensor_x_sp = tensor_x |
|
|
| tensor_x = tf.reshape(tensor_x, (-1, 512 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 512 * 4 * 4, 512, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def generative_cnn_encoder_deeper13(inputs, is_training=True, drop_keep_prob=0.5, init_method=None): |
| tensor_x = inputs |
|
|
| with tf.variable_scope(tf.get_variable_scope(), reuse=tf.AUTO_REUSE) as scope: |
| tensor_x = general_conv2d(tensor_x, 32, is_training=is_training, |
| name="CNN_ENC_1", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 32, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_1_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 64, is_training=is_training, |
| name="CNN_ENC_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_2_2", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 128, is_training=is_training, |
| name="CNN_ENC_3", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_3_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_3_3", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 256, is_training=is_training, |
| name="CNN_ENC_4", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_4_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_4_3", init_method=init_method) |
|
|
| tensor_x = general_conv2d(tensor_x, 256, is_training=is_training, |
| name="CNN_ENC_5", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_5_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 256, stride_height=1, stride_width=1, is_training=is_training, |
| name="CNN_ENC_5_3", init_method=init_method) |
| tensor_x_sp = tensor_x |
|
|
| tensor_x = tf.reshape(tensor_x, (-1, 256 * 4 * 4)) |
| tensor_x = linear1d(tensor_x, 256 * 4 * 4, 128, name='CNN_ENC_FC', init_method=init_method) |
|
|
| if is_training: |
| tensor_x = tf.nn.dropout(tensor_x, drop_keep_prob) |
|
|
| return tensor_x, tensor_x_sp |
|
|
|
|
| def max_pooling(x) : |
| return tf.layers.max_pooling2d(x, pool_size=2, strides=2, padding='SAME') |
|
|
|
|
| def hw_flatten(x) : |
| return tf.reshape(x, shape=[x.shape[0], -1, x.shape[-1]]) |
|
|
|
|
| def self_attention(x, in_channel, name='self_attention'): |
| with tf.variable_scope(name) as scope: |
| f = general_conv2d(x, in_channel // 8, filter_height=1, filter_width=1, stride_height=1, stride_width=1, |
| do_norm=False, do_relu=False, name='f_conv') |
| f = max_pooling(f) |
| g = general_conv2d(x, in_channel // 8, filter_height=1, filter_width=1, stride_height=1, stride_width=1, |
| do_norm=False, do_relu=False, name='g_conv') |
| h = general_conv2d(x, in_channel, filter_height=1, filter_width=1, stride_height=1, stride_width=1, |
| do_norm=False, do_relu=False, name='h_conv') |
| h = max_pooling(h) |
|
|
| |
| s = tf.matmul(hw_flatten(g), hw_flatten(f), transpose_b=True) |
| beta = tf.nn.softmax(s) |
|
|
| o = tf.matmul(beta, hw_flatten(h)) |
| gamma = tf.get_variable("gamma", [1], initializer=tf.constant_initializer(0.0)) |
|
|
| o = tf.reshape(o, shape=x.shape) |
| o = general_conv2d(o, in_channel, filter_height=1, filter_width=1, stride_height=1, stride_width=1, |
| do_norm=False, do_relu=False, name='attn_conv') |
|
|
| x = gamma * o + x |
|
|
| return x |
|
|
|
|
| def global_avg_pooling(x): |
| gap = tf.reduce_mean(x, axis=[1, 2]) |
| return gap |
|
|
|
|
| def cnn_discriminator_wgan_gp(discrim_inputs, discrim_targets, init_method=None): |
| tensor_x = tf.concat([discrim_inputs, discrim_targets], axis=3) |
|
|
| with tf.variable_scope(tf.get_variable_scope(), reuse=tf.AUTO_REUSE) as scope: |
| tensor_x = general_conv2d(tensor_x, 32, filter_height=3, filter_width=3, |
| is_training=True, name="CNN_ENC_1", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 64, filter_height=3, filter_width=3, |
| is_training=True, name="CNN_ENC_2", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, |
| is_training=True, name="CNN_ENC_3", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 128, filter_height=3, filter_width=3, |
| is_training=True, name="CNN_ENC_4", init_method=init_method) |
| tensor_x = general_conv2d(tensor_x, 1, filter_height=3, filter_width=3, |
| is_training=True, name="CNN_ENC_5", init_method=init_method) |
| |
|
|
| d_out = global_avg_pooling(tensor_x) |
|
|
| return d_out |
|
|