Clustering-based unsupervised domain adaptive (UDA) person re-identification (ReID) reduces exhaustive annotations. However, owing to unsatisfactory feature embedding and imperfect clustering, pseudo labels for target domain data inherently contain an unknown proportion of wrong ones, which would mislead feature learning. In this paper, we propose an approach named probabilistic uncertainty guided progressive label refinery (P$^2$LR) for domain adaptive person re-identification. First, we propose to model the labeling uncertainty with the probabilistic distance along with ideal single-peak distributions. A quantitative criterion is established to measure the uncertainty of pseudo labels and facilitate the network training. Second, we explore a progressive strategy for refining pseudo labels. With the uncertainty-guided alternative optimization, we balance between the exploration of target domain data and the negative effects of noisy labeling. On top of a strong baseline, we obtain significant improvements and achieve the state-of-the-art performance on four UDA ReID benchmarks. Specifically, our method outperforms the baseline by 6.5% mAP on the Duke2Market task, while surpassing the state-of-the-art method by 2.5% mAP on the Market2MSMT task.
翻译:在本文中,我们提出了一种方法,称为概率性不确定性引导进步标签精炼厂(P$2$LR),用于域适应性人再识别。首先,我们提议以概率距离和理想的单一比值分布为模范,将不确定性与概率距离标出为模范。建立了一个定量标准,以测量假标签的不确定性,并为网络培训提供便利。第二,我们探索改进假标签的渐进战略。在以不确定性为导向的变通优化办法下,我们在目标域数据的探索与噪音标签的消极影响之间保持平衡。在强大的基线之上,我们取得了重大改进,并在四个UDADA ReID基准上实现了最新业绩。具体地说,我们的方法比Duke2Market任务的基准高出了6.5% mAP,同时超越了2.5MAP 的州-MTAP任务方法。