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Multi-path Fusion Network For Semantic Image Segmentation

机译:多路径融合网络的语义图像分割

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Recently, deep convolutional neural networks (CNNs) have led to significant improvement over semantic image segmentation and have also been the best choice. In this paper, we propose a deep neural network architecture, Multi-Path Fusion Network (MPFNet), for semantic image segmentation. In MPFNet, we add more convolution paths to every convolution layer. The depth of each convolutional path increases linearly, which provides a superior method for pixel level prediction. Using this method, we integrate contextual information and local information to produce good quality results on the semantic segmentation task. In addition, dense skip connections are added to repeatedly leverage previous features. The proposed approach improves strong baselines built upon VGG16 on two urban scene datasets, CamVid and Cityscapes, which demonstrate its effectiveness in modeling context information.
机译:最近,深度卷积神经网络(CNNS)导致了对语义图像分割的显着改善,也是最佳选择。在本文中,我们提出了一个深度神经网络架构,多路径融合网络(MPFNET),用于语义图像分割。在MPFNET中,我们为每个卷积图层添加了更多的卷积路径。每个卷积路径的深度线性增加,这提供了一种用于像素电平预测的优异方法。使用此方法,我们集成了上下文信息和本地信息,以产生对语义分段任务的良好质量结果。此外,添加了密集的跳过连接以重复利用以前的功能。所提出的方法改善了在两个城市场景数据集,Camvid和CityCAPE上构建的强大基线,Camvid和Citycapes在模拟上下文信息中展示了其有效性。

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