# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import paddle import paddle.nn as nn import paddle.nn.functional as F from paddleseg.cvlibs import manager from paddleseg.models import layers from paddleseg.utils import utils __all__ = ['DeepLabV3P', 'DeepLabV3'] @manager.MODELS.add_component class DeepLabV3P(nn.Layer): """ The DeepLabV3Plus implementation based on PaddlePaddle. The original article refers to Liang-Chieh Chen, et, al. "Encoder-Decoder with Atrous Separable Convolution for Semantic Image Segmentation" (https://arxiv.org/abs/1802.02611) Args: num_classes (int): The unique number of target classes. backbone (paddle.nn.Layer): Backbone network, currently support Resnet50_vd/Resnet101_vd/Xception65. backbone_indices (tuple, optional): Two values in the tuple indicate the indices of output of backbone. Default: (0, 3). aspp_ratios (tuple, optional): The dilation rate using in ASSP module. If output_stride=16, aspp_ratios should be set as (1, 6, 12, 18). If output_stride=8, aspp_ratios is (1, 12, 24, 36). Default: (1, 6, 12, 18). aspp_out_channels (int, optional): The output channels of ASPP module. Default: 256. align_corners (bool, optional): An argument of F.interpolate. It should be set to False when the feature size is even, e.g. 1024x512, otherwise it is True, e.g. 769x769. Default: False. pretrained (str, optional): The path or url of pretrained model. Default: None. data_format(str, optional): Data format that specifies the layout of input. It can be "NCHW" or "NHWC". Default: "NCHW". """ def __init__(self, num_classes, backbone, backbone_indices=(0, 3), aspp_ratios=(1, 6, 12, 18), aspp_out_channels=256, align_corners=False, pretrained=None, data_format="NCHW"): super().__init__() self.backbone = backbone backbone_channels = [ backbone.feat_channels[i] for i in backbone_indices ] self.head = DeepLabV3PHead( num_classes, backbone_indices, backbone_channels, aspp_ratios, aspp_out_channels, align_corners, data_format=data_format) self.align_corners = align_corners self.pretrained = pretrained self.data_format = data_format self.init_weight() def forward(self, x): feat_list = self.backbone(x) logit_list = self.head(feat_list) if self.data_format == 'NCHW': ori_shape = paddle.shape(x)[2:] else: ori_shape = paddle.shape(x)[1:3] return [ F.interpolate( logit, ori_shape, mode='bilinear', align_corners=self.align_corners, data_format=self.data_format) for logit in logit_list ] def init_weight(self): if self.pretrained is not None: utils.load_entire_model(self, self.pretrained) class DeepLabV3PHead(nn.Layer): """ The DeepLabV3PHead implementation based on PaddlePaddle. Args: num_classes (int): The unique number of target classes. backbone_indices (tuple): Two values in the tuple indicate the indices of output of backbone. the first index will be taken as a low-level feature in Decoder component; the second one will be taken as input of ASPP component. Usually backbone consists of four downsampling stage, and return an output of each stage. If we set it as (0, 3), it means taking feature map of the first stage in backbone as low-level feature used in Decoder, and feature map of the fourth stage as input of ASPP. backbone_channels (tuple): The same length with "backbone_indices". It indicates the channels of corresponding index. aspp_ratios (tuple): The dilation rates using in ASSP module. aspp_out_channels (int): The output channels of ASPP module. align_corners (bool): An argument of F.interpolate. It should be set to False when the output size of feature is even, e.g. 1024x512, otherwise it is True, e.g. 769x769. data_format(str, optional): Data format that specifies the layout of input. It can be "NCHW" or "NHWC". Default: "NCHW". """ def __init__(self, num_classes, backbone_indices, backbone_channels, aspp_ratios, aspp_out_channels, align_corners, data_format='NCHW'): super().__init__() self.aspp = layers.ASPPModule( aspp_ratios, backbone_channels[1], aspp_out_channels, align_corners, use_sep_conv=True, image_pooling=True, data_format=data_format) self.decoder = Decoder( num_classes, backbone_channels[0], align_corners, data_format=data_format) self.backbone_indices = backbone_indices def forward(self, feat_list): logit_list = [] low_level_feat = feat_list[self.backbone_indices[0]] x = feat_list[self.backbone_indices[1]] x = self.aspp(x) logit = self.decoder(x, low_level_feat) logit_list.append(logit) return logit_list @manager.MODELS.add_component class DeepLabV3(nn.Layer): """ The DeepLabV3 implementation based on PaddlePaddle. The original article refers to Liang-Chieh Chen, et, al. "Rethinking Atrous Convolution for Semantic Image Segmentation" (https://arxiv.org/pdf/1706.05587.pdf). Args: Please Refer to DeepLabV3P above. """ def __init__(self, num_classes, backbone, backbone_indices=(3, ), aspp_ratios=(1, 6, 12, 18), aspp_out_channels=256, align_corners=False, pretrained=None): super().__init__() self.backbone = backbone backbone_channels = [ backbone.feat_channels[i] for i in backbone_indices ] self.head = DeepLabV3Head(num_classes, backbone_indices, backbone_channels, aspp_ratios, aspp_out_channels, align_corners) self.align_corners = align_corners self.pretrained = pretrained self.init_weight() def forward(self, x): feat_list = self.backbone(x) logit_list = self.head(feat_list) return [ F.interpolate( logit, paddle.shape(x)[2:], mode='bilinear', align_corners=self.align_corners) for logit in logit_list ] def init_weight(self): if self.pretrained is not None: utils.load_entire_model(self, self.pretrained) class DeepLabV3Head(nn.Layer): """ The DeepLabV3Head implementation based on PaddlePaddle. Args: Please Refer to DeepLabV3PHead above. """ def __init__(self, num_classes, backbone_indices, backbone_channels, aspp_ratios, aspp_out_channels, align_corners): super().__init__() self.aspp = layers.ASPPModule( aspp_ratios, backbone_channels[0], aspp_out_channels, align_corners, use_sep_conv=False, image_pooling=True) self.cls = nn.Conv2D( in_channels=aspp_out_channels, out_channels=num_classes, kernel_size=1) self.backbone_indices = backbone_indices def forward(self, feat_list): logit_list = [] x = feat_list[self.backbone_indices[0]] x = self.aspp(x) logit = self.cls(x) logit_list.append(logit) return logit_list class Decoder(nn.Layer): """ Decoder module of DeepLabV3P model Args: num_classes (int): The number of classes. in_channels (int): The number of input channels in decoder module. """ def __init__(self, num_classes, in_channels, align_corners, data_format='NCHW'): super(Decoder, self).__init__() self.data_format = data_format self.conv_bn_relu1 = layers.ConvBNReLU( in_channels=in_channels, out_channels=48, kernel_size=1, data_format=data_format) self.conv_bn_relu2 = layers.SeparableConvBNReLU( in_channels=304, out_channels=256, kernel_size=3, padding=1, data_format=data_format) self.conv_bn_relu3 = layers.SeparableConvBNReLU( in_channels=256, out_channels=256, kernel_size=3, padding=1, data_format=data_format) self.conv = nn.Conv2D( in_channels=256, out_channels=num_classes, kernel_size=1, data_format=data_format) self.align_corners = align_corners def forward(self, x, low_level_feat): low_level_feat = self.conv_bn_relu1(low_level_feat) if self.data_format == 'NCHW': low_level_shape = paddle.shape(low_level_feat)[-2:] axis = 1 else: low_level_shape = paddle.shape(low_level_feat)[1:3] axis = -1 x = F.interpolate( x, low_level_shape, mode='bilinear', align_corners=self.align_corners, data_format=self.data_format) x = paddle.concat([x, low_level_feat], axis=axis) x = self.conv_bn_relu2(x) x = self.conv_bn_relu3(x) x = self.conv(x) return x