基于互补前景的域特征对齐跨域行人再识别

Jiajian Huang
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引用次数: 0

摘要

尽管在有监督的行人再识别(re-id)方面取得了重大进展,但由于存在巨大的领域差距,将re-id模型扩展到新的场景中仍然具有挑战性。消除特定于领域的特征和对齐领域特征是解决跨领域问题的思路。然而,对于前者,现有的方案往往不够彻底,无法摆脱领域的独特性,而对于后者,领域特征对齐方案试图对齐背景等不应该对齐的信息,因此无法达到理想的效果。本文提出了一种基于互补前景的区域对齐方法。该方案借助掩模彻底去除背景杂波,并利用行人属性信息和控制因子降低掩模对背景损失的影响。最后,我们以均值差最大的值来度量两个域之间的分布差,并根据不同的特征级别使特征分布更远或更近。在主流数据上的实验表明,我们的方案比基准高13.9%,大量的烧蚀实验证明了我们设计的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain Feature Alignment Based on Complement Foreground for Cross-domain Pedestrian Re-identification
Although significant progress has been made in supervised pedestrian re-identification (re-id), it is still challenging to extend the re-id model to new scenes due to the huge domain gap. Getting rid of domain-specific features and aligning domain features are the ideas to solve cross-domain problems. However, for the former, the existing schemes are often not thorough enough to get rid of the unique characteristics of the domain, and for the latter, domain feature alignment schemes try to align the background and other information that should not be aligned, so they fail to achieve ideal results. In this paper, we propose domain alignment based on complementary foreground. The scheme strips off background clutter thoroughly with the help of mask, and uses pedestrian attribute information and control factor to reduce the influence of background loss caused by masks. Finally, we measure the distribution difference between the two domains with maximum mean difference, and make the feature distribution farther or closer according to the different feature levels. Experiments on mainstream data show that our scheme is 13.9% higher than the benchmark, and extensive ablation experiments prove the effectiveness of our design.
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