Unsupervised Domain Adaptation (UDA) for re-identification (re-ID) is a challenging task: to avoid a costly annotation of additional data, it aims at transferring knowledge from a domain with annotated data to a domain of interest with only unlabeled data. Pseudo-labeling approaches have proven to be effective for UDA re-ID. However, the effectiveness of these approaches heavily depends on the choice of some hyperparameters (HP) that affect the generation of pseudo-labels by clustering. The lack of annotation in the domain of interest makes this choice non-trivial. Current approaches simply reuse the same empirical value for all adaptation tasks and regardless of the target data representation that changes through pseudo-labeling training phases. As this simplistic choice may limit their performance, we aim at addressing this issue. We propose new theoretical grounds on HP selection for clustering UDA re-ID as well as method of automatic and cyclic HP tuning for pseudo-labeling UDA clustering: HyPASS. HyPASS consists in incorporating two modules in pseudo-labeling methods: (i) HP selection based on a labeled source validation set and (ii) conditional domain alignment of feature discriminativeness to improve HP selection based on source samples. Experiments on commonly used person re-ID and vehicle re-ID datasets show that our proposed HyPASS consistently improves the best state-of-the-art methods in re-ID compared to the commonly used empirical HP setting.
翻译:用于再识别(再标识)的未监督域适应(UDA)是一项艰巨的任务:为了避免花费昂贵的附加数据说明,目前的方法旨在将知识从带有附加说明数据的域中再利用相同的经验价值,而不论目标数据表示是否通过假标签培训阶段的变化,将知识从带有附加说明数据的域转移到一个感兴趣的域中。 实践证明Pseudo标签方法对UDA再标识系统有效。然而,这些方法的有效性在很大程度上取决于选择某些超参数(HP)影响通过集群生成假标签生成假标签。 兴趣领域缺乏注解使得这一选择非三角性。 目前的方法只是为所有适应任务重新利用相同的经验价值,而不管目标数据表示是否通过假标签培训阶段的变化。由于这种简单化的选择可能限制其性能,我们的目标是解决这一问题。 我们提出了有关HP选择将UDA再标识重新标识的新的理论依据,以及假标签用户群集自动和周期性HPS调整方法: HyPASS. HyPASS包含将两个模块纳入假标签标签标签方法中:(iID)基于常用域域校正比性定位车辆校准功能,根据常用校准标准校正校准源,以显示常用的HPHSrealalalalalalalalalalalisprpris校校校校。