Person Re-Identification (ReID) refers to the task of verifying the identity of a pedestrian observed from non-overlapping surveillance cameras views. Recently, it has been validated that re-ranking could bring extra performance improvements in person ReID. However, the current re-ranking approaches either require feedbacks from users or suffer from burdensome computation cost. In this paper, we propose to exploit a density-adaptive kernel technique to perform efficient and effective re-ranking for person ReID. Specifically, we present two simple yet effective re-ranking methods, termed inverse Density-Adaptive Kernel based Re-ranking (inv-DAKR) and bidirectional Density-Adaptive Kernel based Re-ranking (bi-DAKR), which are based on a smooth kernel function with a density-adaptive parameter. Experiments on six benchmark data sets confirm that our proposals are effective and efficient.
翻译:个人身份重新识别(ReID)是指核实从非重叠监控摄像机观测到的行人身份的任务。最近,经过验证,重新排序可能会给个人身份重新识别带来额外的性能改进。然而,目前的重新排序方法要么需要用户的反馈,要么要承受沉重的计算成本。在本文中,我们提议利用密度适应内核技术,对人的身份重新识别进行高效和有效的重新排序。具体地说,我们提出了两种简单而有效的重新排序方法,称为反密度-Adaptical Knel的重新排序(in-DAKR)和双向密度适应性内核重新排序(bi-DAKR),其基础是带有密度适应参数的平稳内核功能。对六个基准数据集的实验证实我们的建议是有效和高效的。