The use of pseudo-labels prevails in order to tackle Unsupervised Domain Adaptive (UDA) Re-Identification (re-ID) with the best performance. Indeed, this family of approaches has given rise to several UDA re-ID specific frameworks, which are effective. In these works, research directions to improve Pseudo-Labeling UDA re-ID performance are varied and mostly based on intuition and experiments: refining pseudo-labels, reducing the impact of errors in pseudo-labels... It can be hard to deduce from them general good practices, which can be implemented in any Pseudo-Labeling method, to consistently improve its performance. To address this key question, a new theoretical view on Pseudo-Labeling UDA re-ID is proposed. The contributions are threefold: (i) A novel theoretical framework for Pseudo-Labeling UDA re-ID, formalized through a new general learning upper-bound on the UDA re-ID performance. (ii) General good practices for Pseudo-Labeling, directly deduced from the interpretation of the proposed theoretical framework, in order to improve the target re-ID performance. (iii) Extensive experiments on challenging person and vehicle cross-dataset re-ID tasks, showing consistent performance improvements for various state-of-the-art methods and various proposed implementations of good practices.
翻译:使用假标签普遍,以便以最佳性能解决无人监督的域名适应性(UDA)再识别(Re-ID)问题。事实上,这一系列方法产生了若干UDA重新识别(Re-ID)的具体框架,这些框架是有效的。在这些工作中,为改善普塞多-拉贝(UDA)再开发(UDA)再识别(UDA)业绩的研究方向各不相同,主要基于直觉和实验:改进伪标签,减少伪标签错误的影响......从中很难从中推导出一般的良好做法,这些良好做法可以在任何普塞多-拉比方法中实施,以不断改进其绩效。为了解决这一关键问题,提出了关于普塞多-拉比(UDA)再开发(UDA)再开发(Udedo-Labe)新的理论观点。 贡献有三部分是:(一)普塞多-拉比(UDA)再开发(UDA)重新开发(UDA)重新开发(UDA)重新开发(UDA)系统业绩的新理论框架,通过新的普遍学习,正式化为UDEu-Lbedo-Lbeing(从解释各种具有挑战性的实验性的任务,直接推导出)和不断展示(M-real-real-redal-real-res-res-res-reax-ass-ress-strual-ass-res-ass-tra-tra-tra-tra-str-stris-stris-stris-stris-stris-stris-tra-tra-tra-tra-stris-stris-tra-ass-px-tra-stris-s-str-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-