Extracting adaptive contextual cues from unlabeled regions

Congcong Li, Devi Parikh, Tsuhan Chen
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引用次数: 47

Abstract

Existing approaches to contextual reasoning for enhanced object detection typically utilize other labeled categories in the images to provide contextual information. As a consequence, they inadvertently commit to the granularity of information implicit in the labels. Moreover, large portions of the images may not belong to any of the manually-chosen categories, and these unlabeled regions are typically neglected. In this paper, we overcome both these drawbacks and propose a contextual cue that exploits unlabeled regions in images. Our approach adaptively determines the granularity (scene, inter-object, intra-object, etc.) at which contextual information is captured. In order to extract the proposed contextual cue, we consider a scene to be a structured configuration of objects and regions; just as an object is a composition of parts. We thus learn our proposed “contextual meta-objects” using any off-the-shelf object detector, which makes our proposed cue widely accessible to the community. Our results show that incorporating our proposed cue provides a relative improvement of 12% over a state-of-the-art object detector on the challenging PASCAL dataset.
从未标记区域提取适应性上下文线索
现有的用于增强目标检测的上下文推理方法通常利用图像中的其他标记类别来提供上下文信息。结果是,它们不经意地向标签中隐含的信息粒度提交信息。此外,大部分图像可能不属于任何手动选择的类别,而这些未标记的区域通常被忽略。在本文中,我们克服了这两个缺点,并提出了一种利用图像中未标记区域的上下文线索。我们的方法自适应地确定捕获上下文信息的粒度(场景,对象间,对象内等)。为了提取提议的上下文线索,我们认为场景是物体和区域的结构化配置;正如一个物体是由各个部分组成的。因此,我们使用任何现成的对象检测器来学习我们提出的“上下文元对象”,这使得我们提出的线索被社区广泛访问。我们的结果表明,在具有挑战性的PASCAL数据集上,与最先进的目标检测器相比,结合我们提出的线索提供了12%的相对改进。
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