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| import paddle |
| import paddle.nn as nn |
| import paddle.nn.functional as F |
| from paddle import ParamAttr |
| from paddle.nn.initializer import Constant, Uniform, Normal, XavierUniform |
| from ppdet.core.workspace import register, serializable |
| from paddle.regularizer import L2Decay |
| from ppdet.modeling.layers import DeformableConvV2, ConvNormLayer, LiteConv |
| import math |
| from ppdet.modeling.ops import batch_norm |
| from ..shape_spec import ShapeSpec |
|
|
| __all__ = ['TTFFPN'] |
|
|
|
|
| class Upsample(nn.Layer): |
| def __init__(self, ch_in, ch_out, norm_type='bn'): |
| super(Upsample, self).__init__() |
| fan_in = ch_in * 3 * 3 |
| stdv = 1. / math.sqrt(fan_in) |
| self.dcn = DeformableConvV2( |
| ch_in, |
| ch_out, |
| kernel_size=3, |
| weight_attr=ParamAttr(initializer=Uniform(-stdv, stdv)), |
| bias_attr=ParamAttr( |
| initializer=Constant(0), |
| regularizer=L2Decay(0.), |
| learning_rate=2.), |
| lr_scale=2., |
| regularizer=L2Decay(0.)) |
|
|
| self.bn = batch_norm( |
| ch_out, norm_type=norm_type, initializer=Constant(1.)) |
|
|
| def forward(self, feat): |
| dcn = self.dcn(feat) |
| bn = self.bn(dcn) |
| relu = F.relu(bn) |
| out = F.interpolate(relu, scale_factor=2., mode='bilinear') |
| return out |
|
|
|
|
| class DeConv(nn.Layer): |
| def __init__(self, ch_in, ch_out, norm_type='bn'): |
| super(DeConv, self).__init__() |
| self.deconv = nn.Sequential() |
| conv1 = ConvNormLayer( |
| ch_in=ch_in, |
| ch_out=ch_out, |
| stride=1, |
| filter_size=1, |
| norm_type=norm_type, |
| initializer=XavierUniform()) |
| conv2 = nn.Conv2DTranspose( |
| in_channels=ch_out, |
| out_channels=ch_out, |
| kernel_size=4, |
| padding=1, |
| stride=2, |
| groups=ch_out, |
| weight_attr=ParamAttr(initializer=XavierUniform()), |
| bias_attr=False) |
| bn = batch_norm(ch_out, norm_type=norm_type, norm_decay=0.) |
| conv3 = ConvNormLayer( |
| ch_in=ch_out, |
| ch_out=ch_out, |
| stride=1, |
| filter_size=1, |
| norm_type=norm_type, |
| initializer=XavierUniform()) |
|
|
| self.deconv.add_sublayer('conv1', conv1) |
| self.deconv.add_sublayer('relu6_1', nn.ReLU6()) |
| self.deconv.add_sublayer('conv2', conv2) |
| self.deconv.add_sublayer('bn', bn) |
| self.deconv.add_sublayer('relu6_2', nn.ReLU6()) |
| self.deconv.add_sublayer('conv3', conv3) |
| self.deconv.add_sublayer('relu6_3', nn.ReLU6()) |
|
|
| def forward(self, inputs): |
| return self.deconv(inputs) |
|
|
|
|
| class LiteUpsample(nn.Layer): |
| def __init__(self, ch_in, ch_out, norm_type='bn'): |
| super(LiteUpsample, self).__init__() |
| self.deconv = DeConv(ch_in, ch_out, norm_type=norm_type) |
| self.conv = LiteConv(ch_in, ch_out, norm_type=norm_type) |
|
|
| def forward(self, inputs): |
| deconv_up = self.deconv(inputs) |
| conv = self.conv(inputs) |
| interp_up = F.interpolate(conv, scale_factor=2., mode='bilinear') |
| return deconv_up + interp_up |
|
|
|
|
| class ShortCut(nn.Layer): |
| def __init__(self, |
| layer_num, |
| ch_in, |
| ch_out, |
| norm_type='bn', |
| lite_neck=False, |
| name=None): |
| super(ShortCut, self).__init__() |
| shortcut_conv = nn.Sequential() |
| for i in range(layer_num): |
| fan_out = 3 * 3 * ch_out |
| std = math.sqrt(2. / fan_out) |
| in_channels = ch_in if i == 0 else ch_out |
| shortcut_name = name + '.conv.{}'.format(i) |
| if lite_neck: |
| shortcut_conv.add_sublayer( |
| shortcut_name, |
| LiteConv( |
| in_channels=in_channels, |
| out_channels=ch_out, |
| with_act=i < layer_num - 1, |
| norm_type=norm_type)) |
| else: |
| shortcut_conv.add_sublayer( |
| shortcut_name, |
| nn.Conv2D( |
| in_channels=in_channels, |
| out_channels=ch_out, |
| kernel_size=3, |
| padding=1, |
| weight_attr=ParamAttr(initializer=Normal(0, std)), |
| bias_attr=ParamAttr( |
| learning_rate=2., regularizer=L2Decay(0.)))) |
| if i < layer_num - 1: |
| shortcut_conv.add_sublayer(shortcut_name + '.act', |
| nn.ReLU()) |
| self.shortcut = self.add_sublayer('shortcut', shortcut_conv) |
|
|
| def forward(self, feat): |
| out = self.shortcut(feat) |
| return out |
|
|
|
|
| @register |
| @serializable |
| class TTFFPN(nn.Layer): |
| """ |
| Args: |
| in_channels (list): number of input feature channels from backbone. |
| [128,256,512,1024] by default, means the channels of DarkNet53 |
| backbone return_idx [1,2,3,4]. |
| planes (list): the number of output feature channels of FPN. |
| [256, 128, 64] by default |
| shortcut_num (list): the number of convolution layers in each shortcut. |
| [3,2,1] by default, means DarkNet53 backbone return_idx_1 has 3 convs |
| in its shortcut, return_idx_2 has 2 convs and return_idx_3 has 1 conv. |
| norm_type (string): norm type, 'sync_bn', 'bn', 'gn' are optional. |
| bn by default |
| lite_neck (bool): whether to use lite conv in TTFNet FPN, |
| False by default |
| fusion_method (string): the method to fusion upsample and lateral layer. |
| 'add' and 'concat' are optional, add by default |
| """ |
|
|
| __shared__ = ['norm_type'] |
|
|
| def __init__(self, |
| in_channels, |
| planes=[256, 128, 64], |
| shortcut_num=[3, 2, 1], |
| norm_type='bn', |
| lite_neck=False, |
| fusion_method='add'): |
| super(TTFFPN, self).__init__() |
| self.planes = planes |
| self.shortcut_num = shortcut_num[::-1] |
| self.shortcut_len = len(shortcut_num) |
| self.ch_in = in_channels[::-1] |
| self.fusion_method = fusion_method |
|
|
| self.upsample_list = [] |
| self.shortcut_list = [] |
| self.upper_list = [] |
| for i, out_c in enumerate(self.planes): |
| in_c = self.ch_in[i] if i == 0 else self.upper_list[-1] |
| upsample_module = LiteUpsample if lite_neck else Upsample |
| upsample = self.add_sublayer( |
| 'upsample.' + str(i), |
| upsample_module( |
| in_c, out_c, norm_type=norm_type)) |
| self.upsample_list.append(upsample) |
| if i < self.shortcut_len: |
| shortcut = self.add_sublayer( |
| 'shortcut.' + str(i), |
| ShortCut( |
| self.shortcut_num[i], |
| self.ch_in[i + 1], |
| out_c, |
| norm_type=norm_type, |
| lite_neck=lite_neck, |
| name='shortcut.' + str(i))) |
| self.shortcut_list.append(shortcut) |
| if self.fusion_method == 'add': |
| upper_c = out_c |
| elif self.fusion_method == 'concat': |
| upper_c = out_c * 2 |
| else: |
| raise ValueError('Illegal fusion method. Expected add or\ |
| concat, but received {}'.format(self.fusion_method)) |
| self.upper_list.append(upper_c) |
|
|
| def forward(self, inputs): |
| feat = inputs[-1] |
| for i, out_c in enumerate(self.planes): |
| feat = self.upsample_list[i](feat) |
| if i < self.shortcut_len: |
| shortcut = self.shortcut_list[i](inputs[-i - 2]) |
| if self.fusion_method == 'add': |
| feat = feat + shortcut |
| else: |
| feat = paddle.concat([feat, shortcut], axis=1) |
| return feat |
|
|
| @classmethod |
| def from_config(cls, cfg, input_shape): |
| return {'in_channels': [i.channels for i in input_shape], } |
|
|
| @property |
| def out_shape(self): |
| return [ShapeSpec(channels=self.upper_list[-1], )] |
|
|