上下文在野外目标检测和语义分割中的作用

Roozbeh Mottaghi, Xianjie Chen, Xiaobai Liu, Nam-Gyu Cho, Seong-Whan Lee, S. Fidler, R. Urtasun, A. Yuille
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引用次数: 1203

摘要

在本文中,我们研究了上下文在现有的最先进的检测和分割方法中的作用。为了实现这一目标,我们用语义类别标记了PASCAL VOC 2010检测挑战的每个像素。我们相信这些数据会给社区带来很多挑战,因为它包含520个额外的类,用于语义分割和对象检测。我们的分析表明,基于最近邻的方法在上下文类的语义分割上表现不佳,显示了PASCAL图像的可变性。此外,现有的上下文检测模型的改进是相当有限的。为了提高在这种困难场景下的性能,我们提出了一种新的基于可变形部件的模型,该模型既利用了每个候选检测周围的局部上下文,也利用了场景级别的全局上下文。我们表明,这种上下文推理显著有助于在所有尺度上检测物体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Role of Context for Object Detection and Semantic Segmentation in the Wild
In this paper we study the role of context in existing state-of-the-art detection and segmentation approaches. Towards this goal, we label every pixel of PASCAL VOC 2010 detection challenge with a semantic category. We believe this data will provide plenty of challenges to the community, as it contains 520 additional classes for semantic segmentation and object detection. Our analysis shows that nearest neighbor based approaches perform poorly on semantic segmentation of contextual classes, showing the variability of PASCAL imagery. Furthermore, improvements of existing contextual models for detection is rather modest. In order to push forward the performance in this difficult scenario, we propose a novel deformable part-based model, which exploits both local context around each candidate detection as well as global context at the level of the scene. We show that this contextual reasoning significantly helps in detecting objects at all scales.
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