Multi-Class Part Parsing With Joint Boundary-Semantic Awareness

Yifan Zhao, Jia Li, Yu Zhang, Yonghong Tian
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引用次数: 40

Abstract

Object part parsing in the wild, which requires to simultaneously detect multiple object classes in the scene and accurately segments semantic parts within each class, is challenging for the joint presence of class-level and part-level ambiguities. Despite its importance, however, this problem is not sufficiently explored in existing works. In this paper, we propose a joint parsing framework with boundary and semantic awareness to address this challenging problem. To handle part-level ambiguity, a boundary awareness module is proposed to make mid-level features at multiple scales attend to part boundaries for accurate part localization, which are then fused with high-level features for effective part recognition. For class-level ambiguity, we further present a semantic awareness module that selects discriminative part features relevant to a category to prevent irrelevant features being merged together. The proposed modules are lightweight and implementation friendly, improving the performance substantially when plugged into various baseline architectures. Without bells and whistles, the full model sets new state-of-the-art results on the Pascal-Part dataset, in both multi-class and the conventional single-class setting, while running substantially faster than recent high-performance approaches.
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基于联合边界语义感知的多类零件解析
野外对象部分解析需要同时检测场景中的多个对象类,并在每个类中准确地分割语义部分,这对类级和部分级歧义的共同存在具有挑战性。然而,尽管这一问题很重要,但在现有的工作中并没有得到充分的探讨。在本文中,我们提出了一个具有边界和语义感知的联合解析框架来解决这一具有挑战性的问题。为了解决零件级模糊问题,提出了一种边界感知模块,使多尺度的中级特征关注零件边界,实现精确的零件定位,然后将其与高级特征融合,实现有效的零件识别。对于类级歧义,我们进一步提出了语义感知模块,该模块选择与类别相关的判别部分特征,以防止不相关的特征合并在一起。所建议的模块是轻量级的和实现友好的,当插入到各种基线体系结构中时,可以大大提高性能。完整的模型在Pascal-Part数据集上设置了最新的最先进的结果,在多类和传统的单类设置中,同时运行速度比最近的高性能方法快得多。
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