Keras
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import os

os.environ['TF_XLA_FLAGS'] = '--tf_xla_enable_xla_devices=false'
os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2'

import glob
libdevice_paths = glob.glob(
    '/root/miniconda3/envs/deeplab/lib/python3.11/site-packages'
    '/nvidia/cuda_nvcc/nvvm/libdevice/libdevice.10.bc'
)
if libdevice_paths:
    cuda_dir = os.path.dirname(os.path.dirname(os.path.dirname(libdevice_paths[0])))
    os.environ['XLA_FLAGS'] = f'--xla_gpu_cuda_data_dir={cuda_dir}'
    print(f"[OK] libdevice found: {libdevice_paths[0]}")
else:
    # Fallback: tắt hoàn toàn XLA
    os.environ['TF_XLA_FLAGS'] = '--tf_xla_enable_xla_devices=false'
    print("[WARN] libdevice not found, XLA disabled")

import warnings
warnings.filterwarnings("ignore", category=UserWarning, message=".*input_shape.*")

import tensorflow as tf
tf.random.set_seed(42)

tf.config.optimizer.set_jit(False)
tf.config.experimental.set_synchronous_execution(True)

from tensorflow.keras import mixed_precision
from tensorflow.keras.applications import MobileNetV2

gpus = tf.config.list_physical_devices('GPU')
if gpus:
    try:
        for gpu in gpus:
            tf.config.experimental.set_memory_growth(gpu, True)
        print("[OK] Đã kích hoạt Memory Growth")
    except RuntimeError as e:
        print(f"Lỗi khởi tạo GPU: {e}")

mixed_precision.set_global_policy('float32')

import numpy as np
import cv2
import matplotlib.pyplot as plt
from sklearn.model_selection import train_test_split
from CLMR import CLMRCallback


BATCH_SIZE = 8
EPOCHS_STAGE_1 = 20
EPOCHS_STAGE_2 = 80
TARGET_SIZE = (128, 128)
NUM_CLASSES = 2

# --- 3. CÁC HÀM TIỀN XỬ LÝ DỮ LIỆU ---


def parse_tfrecord(serialized):
    feature_desc = {
        'image': tf.io.FixedLenFeature([], tf.string),
        'mask':  tf.io.FixedLenFeature([], tf.string),
    }
    parsed = tf.io.parse_single_example(serialized, feature_desc)
    
    image = tf.image.decode_jpeg(parsed['image'], channels=3)
    image = tf.cast(image, tf.float32) / 255.0
    image = tf.image.resize(image, TARGET_SIZE)
    image.set_shape([TARGET_SIZE[0], TARGET_SIZE[1], 3])
    
    mask = tf.image.decode_png(parsed['mask'], channels=1)
    mask = tf.cast(mask, tf.float32)
    mask = tf.image.resize(mask, TARGET_SIZE,
                           method=tf.image.ResizeMethod.NEAREST_NEIGHBOR)
    mask.set_shape([TARGET_SIZE[0], TARGET_SIZE[1], 1])
    
    return image, mask

def augment(image, mask):
    """50% crop ngẫu nhiên, 50% crop tập trung vào vùng có class hiếm"""
    
    def random_crop(image, mask):
        combined = tf.concat([image, mask], axis=-1)
        combined = tf.image.random_flip_left_right(combined)
        min_crop = tf.cast(TARGET_SIZE[0] * 0.5, tf.int32)
        crop_size = tf.random.uniform([], minval=min_crop, maxval=TARGET_SIZE[0], dtype=tf.int32)
        combined = tf.image.random_crop(combined, [crop_size, crop_size, 4])
        combined = tf.image.resize(combined, TARGET_SIZE)
        return combined[..., :3], combined[..., 3:]

    def focused_crop(image, mask):
        """Crop vùng có chứa class 2 hoặc 3"""
        combined = tf.concat([image, mask], axis=-1)
        combined = tf.image.random_flip_left_right(combined)
        
        # Tìm vùng có class hiếm
        rare_mask = tf.logical_or(
            tf.equal(mask[..., 0], 2),
            tf.equal(mask[..., 0], 3)
        )
        rare_indices = tf.where(rare_mask)
        
        # Nếu không có class hiếm thì crop ngẫu nhiên
        has_rare = tf.greater(tf.shape(rare_indices)[0], 0)
        
        def crop_around_rare():
            # Lấy một điểm ngẫu nhiên trong vùng hiếm
            idx = tf.random.uniform(
                [], 0, tf.shape(rare_indices)[0], dtype=tf.int32
            )
            center = tf.cast(rare_indices[idx], tf.int32)
            cy, cx = center[0], center[1]
            
            h, w = TARGET_SIZE
            crop_size = tf.cast(h * 0.5, tf.int32)
            
            # Tính crop box
            y1 = tf.clip_by_value(cy - crop_size//2, 0, h - crop_size)
            x1 = tf.clip_by_value(cx - crop_size//2, 0, w - crop_size)
            
            cropped = combined[y1:y1+crop_size, x1:x1+crop_size, :]
            cropped = tf.image.resize(cropped, TARGET_SIZE)
            return cropped
        
        combined = tf.cond(
            has_rare,
            crop_around_rare,
            lambda: tf.image.resize(combined, TARGET_SIZE)
        )
        return combined[..., :3], combined[..., 3:]
    
    # 50% random, 50% focused
    use_focused = tf.random.uniform([]) > 0.5
    image, mask = tf.cond(
        use_focused,
        lambda: focused_crop(image, mask),
        lambda: random_crop(image, mask)
    )
    
    # Color augmentation
    image = tf.image.random_brightness(image, max_delta=0.15)
    image = tf.image.random_contrast(image, lower=0.85, upper=1.15)
    image = tf.image.random_saturation(image, lower=0.85, upper=1.15)
    image = tf.clip_by_value(image, 0.0, 1.0)
    
    return image, mask

def load_tfrecord_dataset(tfrecord_pattern, batch_size=4, training=False):
    files = tf.data.Dataset.list_files(tfrecord_pattern, shuffle=training)
    dataset = files.interleave(
        lambda f: tf.data.TFRecordDataset(f, compression_type='GZIP'),
        cycle_length=4,
        num_parallel_calls=tf.data.AUTOTUNE
    )
    dataset = dataset.map(parse_tfrecord, num_parallel_calls=tf.data.AUTOTUNE)
    if training:
        dataset = dataset.shuffle(buffer_size=500)
        dataset = dataset.map(augment, num_parallel_calls=tf.data.AUTOTUNE)
    dataset = dataset.batch(batch_size, drop_remainder=True)
    dataset = dataset.prefetch(tf.data.AUTOTUNE)
    return dataset


# --- 5. ĐỊNH NGHĨA MODEL ---

def aspp_block(x, filters=128):
    b1 = tf.keras.layers.Conv2D(filters, 1, padding='same', use_bias=False)(x)
    b1 = tf.keras.layers.BatchNormalization()(b1)
    b1 = tf.keras.layers.Activation('relu')(b1)
    b2 = tf.keras.layers.Conv2D(filters, 3, padding='same', dilation_rate=6, use_bias=False)(x)
    b2 = tf.keras.layers.BatchNormalization()(b2)
    b2 = tf.keras.layers.Activation('relu')(b2)
    out = tf.keras.layers.Concatenate()([b1, b2])
    out = tf.keras.layers.Conv2D(filters, 1, use_bias=False)(out)
    out = tf.keras.layers.BatchNormalization()(out)
    out = tf.keras.layers.Activation('relu')(out)
    return out


def decodeBlock(prev_layer_input, skip_layer_input, n_filters=32):

    up = tf.keras.layers.Conv2DTranspose(
                 n_filters,
                 (3,3),    # Kernel size
                 strides=(2,2),
                 padding='same',
                 kernel_regularizer=tf.keras.regularizers.l2(1e-4)
                 )(prev_layer_input)

    merge = tf.keras.layers.concatenate([up, skip_layer_input], axis=3)
    
    conv = tf.keras.layers.Conv2D(n_filters, 
                 3,     # Kernel size
                 activation='relu',
                 padding='same',
                 kernel_initializer='he_normal',
                 kernel_regularizer=tf.keras.regularizers.l2(1e-4)
                 )(merge)

    conv = tf.keras.layers.BatchNormalization()(conv)
    
    conv = tf.keras.layers.Conv2D(n_filters,
                 3,   # Kernel size
                 activation='relu',
                 padding='same',
                 kernel_initializer='he_normal',
                 kernel_regularizer=tf.keras.regularizers.l2(1e-4)
                 )(conv)

    conv = tf.keras.layers.BatchNormalization()(conv)

    
    return conv

from tensorflow.keras.applications import EfficientNetB1

def efficientnet_unet(input_size=(512, 512, 3), n_filter=16, num_classes=5):
    inputs = tf.keras.Input(shape=input_size)
    x = tf.keras.layers.Rescaling(scale=255.0)(inputs)

    backbone = EfficientNetB1(
        input_tensor=x,
        include_top=False,
        weights='imagenet'
    )
    backbone.trainable = False

    s1 = backbone.get_layer('block2a_expand_activation').output  # 256x256
    s2 = backbone.get_layer('block3a_expand_activation').output  # 128x128
    s3 = backbone.get_layer('block4a_expand_activation').output  # 64x64
    s4 = backbone.get_layer('block6a_expand_activation').output  # 32x32
    s5 = backbone.get_layer('top_activation').output             # 16x16

    # Bridge ASPP
    bridge = aspp_block(s5,filters=n_filter * 8)

    # Decoder
    d1 = decodeBlock(bridge,s4,n_filter * 16)  # 16→32
    d2 = decodeBlock(d1,s3,n_filter * 8)   # 32→64
    d3 = decodeBlock(d2,s2,n_filter * 4)   # 64→128
    d4 = decodeBlock(d3,s1,n_filter * 2)   # 128→256

    x = tf.keras.layers.Conv2DTranspose(n_filter, 3, strides=2, padding='same')(d4)
    x = tf.keras.layers.BatchNormalization()(x)
    x = tf.keras.layers.Activation('relu')(x)

    outputs = tf.keras.layers.Conv2D(
        num_classes, 1, activation='softmax', dtype='float32'
    )(x)

    model = tf.keras.Model(inputs, outputs)
    model.backbone = backbone
    return model

def deeplab_model(input_size=(512, 512, 3), n_filter=16, num_classes=5):
    inputs = tf.keras.Input(shape=input_size)
    x = tf.keras.layers.Rescaling(scale=2.0, offset=-1.0)(inputs)

    backbone = MobileNetV2(
        input_tensor=x,
        include_top=False,
        weights='imagenet'
    )
    backbone.trainable = False

    low_level  = backbone.get_layer('block_2_add').output          # 128x128
    high_level = backbone.get_layer('block_13_expand_relu').output # 32x32

    aspp_b1 = tf.keras.layers.Conv2D(n_filter, (1,1), padding='same')(high_level)
    aspp_b1 = tf.keras.layers.BatchNormalization()(aspp_b1)
    aspp_b1 = tf.keras.layers.Activation('relu')(aspp_b1)

    aspp_b2 = tf.keras.layers.Conv2D(n_filter, (3,3), dilation_rate=6, padding='same')(high_level)
    aspp_b2 = tf.keras.layers.BatchNormalization()(aspp_b2)
    aspp_b2 = tf.keras.layers.Activation('relu')(aspp_b2)

    aspp_b3 = tf.keras.layers.Conv2D(n_filter, (3,3), dilation_rate=12, padding='same')(high_level)
    aspp_b3 = tf.keras.layers.BatchNormalization()(aspp_b3)
    aspp_b3 = tf.keras.layers.Activation('relu')(aspp_b3)

    aspp_b4 = tf.keras.layers.Conv2D(n_filter, (3,3), dilation_rate=18, padding='same')(high_level)
    aspp_b4 = tf.keras.layers.BatchNormalization()(aspp_b4)
    aspp_b4 = tf.keras.layers.Activation('relu')(aspp_b4)

    aspp_b5 = tf.keras.layers.GlobalAveragePooling2D(keepdims=True)(high_level)
    aspp_b5 = tf.keras.layers.Conv2D(n_filter, (1,1), padding='same')(aspp_b5)
    aspp_b5 = tf.keras.layers.BatchNormalization()(aspp_b5)
    aspp_b5 = tf.keras.layers.Activation('relu')(aspp_b5)
    #aspp_b5 = tf.keras.layers.UpSampling2D(size=(32, 32), interpolation='bilinear')(aspp_b5)
    pool_size = (high_level.shape[1], high_level.shape[2])
    aspp_b5 = tf.keras.layers.Lambda(lambda x: tf.image.resize(x, pool_size, method='bilinear'))(aspp_b5)

    aspp_out = tf.keras.layers.Concatenate()([aspp_b1, aspp_b2, aspp_b3, aspp_b4, aspp_b5])
    aspp_out = tf.keras.layers.Conv2D(n_filter, (1,1), padding='same')(aspp_out)
    aspp_out = tf.keras.layers.BatchNormalization()(aspp_out)
    aspp_out = tf.keras.layers.Activation('relu')(aspp_out)

    high_branch = tf.keras.layers.UpSampling2D(size=(4,4), interpolation='bilinear')(aspp_out)  # 32→128

    low_branch = tf.keras.layers.Conv2D(48, 1, use_bias=False)(low_level)
    low_branch = tf.keras.layers.BatchNormalization()(low_branch)
    low_branch = tf.keras.layers.Activation('relu')(low_branch)

    encode = tf.keras.layers.Concatenate()([low_branch, high_branch])  # 128x128

    encode = tf.keras.layers.Conv2D(n_filter, (3,3), padding='same')(encode)
    encode = tf.keras.layers.BatchNormalization()(encode)
    encode = tf.keras.layers.Activation('relu')(encode)

    encode = tf.keras.layers.Conv2D(n_filter, (3,3), padding='same')(encode)
    encode = tf.keras.layers.BatchNormalization()(encode)
    encode = tf.keras.layers.Activation('relu')(encode)

    encode = tf.keras.layers.UpSampling2D(size=(4,4), interpolation='bilinear')(encode)  # 128→512

    outputs = tf.keras.layers.Conv2D(num_classes, 1, activation='softmax', dtype='float32')(encode)
    model = tf.keras.Model(inputs, outputs)
    model.backbone = backbone
    return model


# --- 6. LOSS & METRICS & OPTIMIZER & CALLBACKS---

class SparseMeanIoU(tf.keras.metrics.MeanIoU):
    def update_state(self, y_true, y_pred, sample_weight=None):
        y_pred = tf.argmax(y_pred, axis=-1)
        if len(y_true.shape) == 4:
            y_true = tf.squeeze(y_true, axis=-1)
        y_true = tf.cast(y_true, tf.int64)
        y_pred = tf.cast(y_pred, tf.int64)
        y_true = tf.where(y_true == 5, tf.cast(1, tf.int64), y_true)
        y_true = tf.clip_by_value(y_true, 0, self.num_classes - 1)
        return super().update_state(y_true, y_pred, sample_weight)



def tversky_loss(y_true, y_pred, alpha=0.7, beta=0.3):
    y_true_sparse = tf.cast(y_true[..., 0], tf.int32)
    y_true_oh = tf.one_hot(y_true_sparse, depth=5)

    tp = tf.reduce_sum(y_true_oh * y_pred, axis=[1, 2])
    fp = tf.reduce_sum((1 - y_true_oh) * y_pred, axis=[1, 2])
    fn = tf.reduce_sum(y_true_oh * (1 - y_pred), axis=[1, 2])

    tversky = (tp + 1e-6) / (tp + alpha * fn + beta * fp + 1e-6)
    return 1.0 - tf.reduce_mean(tversky)

lr_schedule = tf.keras.optimizers.schedules.CosineDecayRestarts(
    initial_learning_rate=1e-4,  # LR ban đầu
    first_decay_steps=1000,      # Số steps mỗi chu kỳ restart
    t_mul=2.0,                   # Mỗi chu kỳ sau dài gấp đôi
    m_mul=0.9,                   # LR đỉnh giảm 10% sau mỗi restart
    alpha=1e-6,                  # LR tối thiểu (không về 0)
)

# --- 7. TRAINING ---

os.makedirs('./model', exist_ok=True)

# Mô Hình deeplabv3

print("Đang khởi tạo Dataset trên CPU...")
train_data = load_tfrecord_dataset('./tfrecord/train_*.tfrecord', batch_size=4, training=True)
val_data   = load_tfrecord_dataset('./tfrecord/val_*.tfrecord',   batch_size=4, training=False)
test_data = load_tfrecord_dataset('./tfrecord/test_*.tfrecord', batch_size=4,training=False)
print("[OK] Dataset đã sẵn sàng")


model = deeplab_model(input_size=(128, 128, 3), n_filter=32)
print("[OK] Đã dựng xong mô hình")
model.compile(
    optimizer=tf.keras.optimizers.Adam(
        learning_rate=lr_schedule,
        beta_1=0.9,          # Momentum (default, giữ nguyên)
        beta_2=0.999,        # RMSprop (default, giữ nguyên)
        epsilon=1e-7,        # Tránh chia 0 (default)
        clipnorm=1.0,        # Gradient clipping: tránh gradient explosion
    ),
    loss=tversky_loss,
    metrics=['accuracy', SparseMeanIoU(num_classes=2, name='mean_iou')]
)

# Giai đoạn 1
print("Starting Stage 1...")
history_1 = model.fit(train_data, epochs=EPOCHS_STAGE_1, validation_data=val_data)

plt.figure(figsize=(12,6))
plt.subplot(1,3,1)
plt.plot(history_1.history['accuracy'],     label='accuracy')
plt.plot(history_1.history['val_accuracy'], label='val_accuracy')
plt.title('Model accuracy'); plt.xlabel('Epoch'); plt.ylabel('accuracy'); plt.legend()

plt.subplot(1,3,2)
plt.plot(history_1.history['mean_iou'],     label='mean_iou')
plt.plot(history_1.history['val_mean_iou'], label='val_mean_iou')
plt.title('Model mean iou'); plt.xlabel('Epoch'); plt.ylabel('mean iou'); plt.legend()

plt.subplot(1,3,3)
plt.plot(history_1.history['loss'],     label='loss')
plt.plot(history_1.history['val_loss'], label='val_loss')
plt.title('Model loss'); plt.xlabel('Epoch'); plt.ylabel('loss'); plt.legend()
plt.savefig('history_stage1.png'); plt.close()

# Giai đoạn 2
model.backbone.trainable = True
model.compile(
    optimizer=tf.keras.optimizers.Adam(
        learning_rate=lr_schedule,
        beta_1=0.9,          # Momentum (default, giữ nguyên)
        beta_2=0.999,        # RMSprop (default, giữ nguyên)
        epsilon=1e-7,        # Tránh chia 0 (default)
        clipnorm=1.0,        # Gradient clipping: tránh gradient explosion
    ),
    loss=tversky_loss,
    metrics=['accuracy', SparseMeanIoU(num_classes=2, name='mean_iou')]
)
print("Starting Stage 2 (Fine-tuning)...")

checkpoint = tf.keras.callbacks.ModelCheckpoint(
    './model/best_deeplab_eff.keras',
    save_best_only=True, monitor='val_mean_iou', mode='max'
)
history_2 = model.fit(train_data, epochs=EPOCHS_STAGE_2, validation_data=val_data, callbacks=[checkpoint])

plt.figure(figsize=(12,6))
plt.subplot(1,3,1)
plt.plot(history_2.history['accuracy'],     label='accuracy')
plt.plot(history_2.history['val_accuracy'], label='val_accuracy')
plt.title('Model accuracy'); plt.xlabel('Epoch'); plt.ylabel('accuracy'); plt.legend()

plt.subplot(1,3,2)
plt.plot(history_2.history['mean_iou'],     label='mean_iou')
plt.plot(history_2.history['val_mean_iou'], label='val_mean_iou')
plt.title('Model mean iou'); plt.xlabel('Epoch'); plt.ylabel('mean iou'); plt.legend()

plt.subplot(1,3,3)
plt.plot(history_2.history['loss'],     label='loss')
plt.plot(history_2.history['val_loss'], label='val_loss')
plt.title('Model loss'); plt.xlabel('Epoch'); plt.ylabel('loss'); plt.legend()
plt.savefig('./model/history_stage2_deeplab_mobilenet.png'); plt.close()

model.save('./model/deeplab_mobilenet.h5')

print("Training Complete. Model Deeplab saved.")


#Mô Hình effnet

model_eff = efficientnet_unet(input_size=(128, 128, 3), n_filter=32)
print("[OK] Đã dựng xong mô hình effnet")

model_eff.compile(
    optimizer=tf.keras.optimizers.Adam(
        learning_rate=lr_schedule,
        beta_1=0.9,          # Momentum (default, giữ nguyên)
        beta_2=0.999,        # RMSprop (default, giữ nguyên)
        epsilon=1e-7,        # Tránh chia 0 (default)
        clipnorm=1.0,        # Gradient clipping: tránh gradient explosion
    ),
    loss=tversky_loss,
    metrics=['accuracy', SparseMeanIoU(num_classes=2, name='mean_iou')]
)    


# Giai đoạn 1
print("Starting Stage 1...")
history_1 = model_eff.fit(train_data, epochs=EPOCHS_STAGE_1, validation_data=val_data)

plt.figure(figsize=(12,6))
plt.subplot(1,3,1)
plt.plot(history_1.history['accuracy'],     label='accuracy')
plt.plot(history_1.history['val_accuracy'], label='val_accuracy')
plt.title('Model accuracy'); plt.xlabel('Epoch'); plt.ylabel('accuracy'); plt.legend()

plt.subplot(1,3,2)
plt.plot(history_1.history['mean_iou'],     label='mean_iou')
plt.plot(history_1.history['val_mean_iou'], label='val_mean_iou')
plt.title('Model mean iou'); plt.xlabel('Epoch'); plt.ylabel('mean iou'); plt.legend()

plt.subplot(1,3,3)
plt.plot(history_1.history['loss'],     label='loss')
plt.plot(history_1.history['val_loss'], label='val_loss')
plt.title('Model loss'); plt.xlabel('Epoch'); plt.ylabel('loss'); plt.legend()
plt.savefig('history_stage1(effnet).png'); plt.close()

# Giai đoạn 2
model_eff.backbone.trainable = True
model_eff.compile(
    optimizer=tf.keras.optimizers.Adam(
        learning_rate=lr_schedule,
        beta_1=0.9,          # Momentum (default, giữ nguyên)
        beta_2=0.999,        # RMSprop (default, giữ nguyên)
        epsilon=1e-7,        # Tránh chia 0 (default)
        clipnorm=1.0,        # Gradient clipping: tránh gradient explosion
    ),
    loss=tversky_loss,
    metrics=['accuracy', SparseMeanIoU(num_classes=2, name='mean_iou')]
)
print("Starting Stage 2 (Fine-tuning)...")

checkpoint = tf.keras.callbacks.ModelCheckpoint(
    './model/best_eff_net.keras',
    save_best_only=True, monitor='val_mean_iou', mode='max'
)
history_2 = model_eff.fit(train_data, epochs=EPOCHS_STAGE_2, validation_data=val_data, callbacks=[checkpoint])

plt.figure(figsize=(12,6))
plt.subplot(1,3,1)
plt.plot(history_2.history['accuracy'],     label='accuracy')
plt.plot(history_2.history['val_accuracy'], label='val_accuracy')
plt.title('Model accuracy'); plt.xlabel('Epoch'); plt.ylabel('accuracy'); plt.legend()

plt.subplot(1,3,2)
plt.plot(history_2.history['mean_iou'],     label='mean_iou')
plt.plot(history_2.history['val_mean_iou'], label='val_mean_iou')
plt.title('Model mean iou'); plt.xlabel('Epoch'); plt.ylabel('mean iou'); plt.legend()

plt.subplot(1,3,3)
plt.plot(history_2.history['loss'],     label='loss')
plt.plot(history_2.history['val_loss'], label='val_loss')
plt.title('Model loss'); plt.xlabel('Epoch'); plt.ylabel('loss'); plt.legend()
plt.savefig('./model/history_stage2_eff_net.png'); plt.close()

model_eff.save('./model/eff_net.h5')

print("Training Complete. Model Effnet saved.")


loss, accuracy, mean_iou = model.evaluate(test_data)
print(f"Loss DeepLabV3+ :{loss}")
print(f"Accuracy DeepLabV3+ :{accuracy}")
print(f"Mean IoU DeepLabV3+ :{mean_iou}")

loss, accuracy, mean_iou = model_eff.evaluate(test_data)
print(f"Loss Effnet :{loss}")
print(f"Accuracy Effnet :{accuracy}")
print(f"Mean IoU Effnet :{mean_iou}")