Efficient Online Local Metric Adaptation via Negative Samples for Person Re-identification

Jiahuan Zhou, Pei Yu, Wei Tang, Ying Wu
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引用次数: 80

Abstract

Many existing person re-identification (PRID) methods typically attempt to train a faithful global metric offline to cover the enormous visual appearance variations, so as to directly use it online on various probes for identity match- ing. However, their need for a huge set of positive training pairs is very demanding in practice. In contrast to these methods, this paper advocates a different paradigm: part of the learning can be performed online but with nominal costs, so as to achieve online metric adaptation for different input probes. A major challenge here is that no positive training pairs are available for the probe anymore. By only exploiting easily-available negative samples, we propose a novel solution to achieve local metric adaptation effectively and efficiently. For each probe at the test time, it learns a strictly positive semi-definite dedicated local metric. Comparing to offline global metric learning, its com- putational cost is negligible. The insight of this new method is that the local hard negative samples can actually provide tight constraints to fine tune the metric locally. This new local metric adaptation method is generally applicable, as it can be used on top of any global metric to enhance its performance. In addition, this paper gives in-depth the- oretical analysis and justification of the new method. We prove that our new method guarantees the reduction of the classification error asymptotically, and prove that it actually learns the optimal local metric to best approximate the asymptotic case by a finite number of training data. Extensive experiments and comparative studies on almost all major benchmarks (VIPeR, QMUL GRID, CUHK Campus, CUHK03 and Market-1501) have confirmed the effectiveness and superiority of our method.
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基于负样本的高效在线局部度量自适应人的再识别
现有的许多人再识别(PRID)方法通常试图在离线状态下训练一个忠实的全局度量来覆盖巨大的视觉外观变化,从而直接将其在线上用于各种探针上进行身份匹配。然而,在实践中,他们对大量积极训练的需求是非常苛刻的。与这些方法相比,本文提倡一种不同的范式:部分学习可以在线进行,但代价不大,从而实现对不同输入探针的在线度量适应。这里的一个主要挑战是探针再也没有可用的正训练对了。通过仅利用容易获得的负样本,我们提出了一种有效地实现局部度量自适应的新方法。对于测试时的每个探测,它学习一个严格正的半定专用局部度量。与离线全局度量学习相比,其计算成本可以忽略不计。这种新方法的洞察力在于,局部硬负样本实际上可以提供严格的约束来局部微调度量。这种新的局部度量自适应方法是普遍适用的,因为它可以在任何全局度量之上使用,以提高其性能。此外,本文还对新方法进行了深入的理论分析和论证。我们证明了我们的新方法保证了分类误差的渐近减小,并证明了它实际上是通过有限个数的训练数据学习到最优的局部度量来逼近渐近情况。在几乎所有主要基准测试(VIPeR、QMUL GRID、中大校园、中大03和Market-1501)上进行的大量实验和比较研究都证实了我们方法的有效性和优越性。
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