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Classification Assisted Segmentation Network for Human Parsing

机译:分类辅助分割网络用于人类解析

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In human parsing task, it is important to fully exploit global and local structure information and get accurate and coherent results. In this paper, we propose a classification assisted segmentation network, in which a multi-label classification task can obtain the probability of each class in an image that used to learn better weights for parsing task. Our method takes advantages of both the global information from classification and the detail information from segmentation. Experiments demonstrate that our method could efficiently avoid the confusion between similar categories and get more reasonable results. Particularly, it significantly boosts performances of rare categories such as scarf, belt and sunglasses with mean IoU increased by 6.29%.
机译:在人类解析任务中,重要的是充分利用全局和本地结构信息并获得准确和连贯的结果。在本文中,我们提出了一种分类辅助分割网络,其中多标签分类任务可以在用于学习解析任务的更好重量的图像中获得每个类的概率。我们的方法从分类和细节信息中获取全局信息的优势。实验表明,我们的方法可以有效地避免相似类别之间的混淆并获得更合理的结果。特别是,它显着提高了稀有类别的表现,例如围巾,皮带和太阳镜,平均iou增加了6.29%。

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