Person re-identification by probabilistic relative distance comparison

Weishi Zheng, S. Gong, T. Xiang
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引用次数: 716

Abstract

Matching people across non-overlapping camera views, known as person re-identification, is challenging due to the lack of spatial and temporal constraints and large visual appearance changes caused by variations in view angle, lighting, background clutter and occlusion. To address these challenges, most previous approaches aim to extract visual features that are both distinctive and stable under appearance changes. However, most visual features and their combinations under realistic conditions are neither stable nor distinctive thus should not be used indiscriminately. In this paper, we propose to formulate person re-identification as a distance learning problem, which aims to learn the optimal distance that can maximises matching accuracy regardless the choice of representation. To that end, we introduce a novel Probabilistic Relative Distance Comparison (PRDC) model, which differs from most existing distance learning methods in that, rather than minimising intra-class variation whilst maximising intra-class variation, it aims to maximise the probability of a pair of true match having a smaller distance than that of a wrong match pair. This makes our model more tolerant to appearance changes and less susceptible to model over-fitting. Extensive experiments are carried out to demonstrate that 1) by formulating the person re-identification problem as a distance learning problem, notable improvement on matching accuracy can be obtained against conventional person re-identification techniques, which is particularly significant when the training sample size is small; and 2) our PRDC outperforms not only existing distance learning methods but also alternative learning methods based on boosting and learning to rank.
基于概率相对距离比较的人再识别
由于缺乏空间和时间限制,以及由于视角、光照、背景杂波和遮挡的变化而导致的巨大视觉外观变化,在非重叠的相机视图中匹配人物,即人的再识别,是具有挑战性的。为了应对这些挑战,大多数先前的方法旨在提取在外观变化下既独特又稳定的视觉特征。然而,在现实条件下,大多数视觉特征及其组合既不稳定也不独特,因此不应随意使用。在本文中,我们建议将人的再识别表述为一个远程学习问题,该问题旨在学习无论选择何种表示方式,都能使匹配精度最大化的最佳距离。为此,我们引入了一种新的概率相对距离比较(PRDC)模型,该模型与大多数现有的远程学习方法不同之处在于,它不是在最大化类内变化的同时最小化类内变化,而是旨在最大化一对正确匹配的距离小于错误匹配的距离的概率。这使得我们的模型对外观变化的容忍度更高,更不容易受到模型过度拟合的影响。大量的实验表明:1)将人再识别问题作为一个远程学习问题,与传统的人再识别技术相比,匹配精度有显著提高,特别是在训练样本量较小的情况下;2)我们的PRDC不仅优于现有的远程学习方法,而且优于基于提升和学习排名的替代学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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