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Graph-Boosted Attentive Network for Semantic Body Parsing

机译:图提升的注意力网络,用于语义身体分析

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Human body parsing remains a challenging problem in natural scenes due to multi-instance and inter-part semantic confusions as well as occlusions. This paper proposes a novel approach to decomposing multiple human bodies into semantic part regions in unconstrained environments. Specifically we propose a convolutional neural network (CNN) architecture which comprises of novel semantic and contour attention mechanisms across feature hierarchy to resolve the semantic ambiguities and boundary localization issues related to semantic body parsing. We further propose to encode estimated pose as higher-level contextual information which is combined with local semantic cues in a novel graphical model in a principled manner. In this proposed model, the lower-level semantic cues can be recursively updated by propagating higher-level contextual information from estimated pose and vice versa across the graph, so as to alleviate erroneous pose information and pixel level predictions. We further propose an optimization technique to efficiently derive the solutions. Our proposed method achieves the state-of-art results on the challenging Pascal Person-Part dataset.
机译:由于多实例和部分间的语义混淆以及遮挡,人体解析在自然场景中仍然是一个具有挑战性的问题。本文提出了一种在不受约束的环境中将多个人体分解为语义部分区域的新颖方法。具体来说,我们提出了一种卷积神经网络(CNN)体系结构,该体系结构包括跨特征层次结构的新颖语义和轮廓注意机制,以解决与语义主体解析有关的语义歧义和边界定位问题。我们进一步建议将估计的姿势编码为更高级别的上下文信息,并以一种有原则的方式在新颖的图形模型中将其与本地语义线索结合在一起。在这个提出的模型中,可以通过从整个图传播估计的姿势(反之亦然)来传播高层的上下文信息,从而递归地更新较低层的语义提示,从而减轻错误的姿势信息和像素水平的预测。我们进一步提出了一种优化技术,可以有效地导出解决方案。我们提出的方法在具有挑战性的Pascal Person-Part数据集上实现了最新的结果。

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