Robust Small-scale Pedestrian Detection with Cued Recall via Memory Learning

Jung Uk Kim, Sungjune Park, Yong Man Ro
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引用次数: 29

Abstract

Although the visual appearances of small-scale objects are not well observed, humans can recognize them by associating the visual cues of small objects from their memorized appearance. It is called cued recall. In this paper, motivated by the memory process of humans, we introduce a novel pedestrian detection framework that imitates cued recall in detecting small-scale pedestrians. We propose a large-scale embedding learning with the large-scale pedestrian recalling memory (LPR Memory). The purpose of the proposed large-scale embedding learning is to memorize and recall the large-scale pedestrian appearance via the LPR Memory. To this end, we employ the large-scale pedestrian exemplar set, so that, the LPR Memory can recall the information of the large-scale pedestrians from the small-scale pedestrians. Comprehensive quantitative and qualitative experimental results validate the effectiveness of the proposed framework with the LPR Memory.
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基于记忆学习的线索回忆鲁棒小尺度行人检测
虽然小物体的视觉外观不能很好地观察到,但人类可以通过将小物体的视觉线索与记忆的外观联系起来来识别它们。这被称为线索回忆。本文以人类的记忆过程为动力,提出了一种模仿线索回忆的行人检测框架,用于检测小规模行人。提出了一种基于大规模行人回忆记忆的大规模嵌入学习方法。提出的大规模嵌入学习的目的是通过LPR记忆来记忆和回忆大规模的行人外观。为此,我们采用大规模的行人样本集,使LPR Memory能够从小规模行人中回忆起大规模行人的信息。综合定量和定性实验结果验证了该框架在LPR记忆中的有效性。
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