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Scalable Person Re-identification: A Benchmark

机译:可扩展人员重新识别:基准

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This paper contributes a new high quality dataset for person re-identification, named "Market-1501". Generally, current datasets: 1) are limited in scale, 2) consist of hand-drawn bboxes, which are unavailable under realistic settings, 3) have only one ground truth and one query image for each identity (close environment). To tackle these problems, the proposed Market-1501 dataset is featured in three aspects. First, it contains over 32,000 annotated bboxes, plus a distractor set of over 500K images, making it the largest person re-id dataset to date. Second, images in Market-1501 dataset are produced using the Deformable Part Model (DPM) as pedestrian detector. Third, our dataset is collected in an open system, where each identity has multiple images under each camera. As a minor contribution, inspired by recent advances in large-scale image search, this paper proposes an unsupervised Bag-of-Words descriptor. We view person re-identification as a special task of image search. In experiment, we show that the proposed descriptor yields competitive accuracy on VIPeR, CUHK03, and Market-1501 datasets, and is scalable on the large-scale 500k dataset.
机译:本文为人的重新识别提供了一个新的高质量数据集,名为“ Market-1501”。通常,当前数据集:1)规模有限,2)由手绘bbox组成,在实际设置下不可用,3)每个身份(封闭环境)只有一个基本事实和一个查询图像。为了解决这些问题,建议的Market-1501数据集分为三个方面。首先,它包含超过32,000个带注释的bbox,以及超过500K图像的分散器集,使其成为迄今为止最大的人re-id数据集。其次,使用可变形零件模型(DPM)作为行人检测器来生成Market-1501数据集中的图像。第三,我们的数据集是在一个开放系统中收集的,每个身份在每个摄像机下都有多个图像。作为次要贡献,受大规模图像搜索的最新进展启发,本文提出了一种无监督词袋描述符。我们将人的重新识别视为图像搜索的一项特殊任务。在实验中,我们证明了所提出的描述符在VIPeR,CUHK03和Market-1501数据集上具有竞争准确性,并且在大规模500k数据集上具有可扩展性。

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