论文标题
无监督人员重新识别的全球距离分布分离
Global Distance-distributions Separation for Unsupervised Person Re-identification
论文作者
论文摘要
受监督的人重新识别(REID)通常由于域差距而导致的现实部署以及目标域数据缺乏注释。通过适应领域的无监督者里德(Reid)具有吸引力,但充满挑战。现有的无监督REID方法通常无法通过基于距离的匹配/排名正确地识别正样本和负样本。阳性样品对(POS-DIST)和负样品对(neg-Dist)的两个距离的两个分布通常不太分开,并且重叠很大。为了解决这个问题,我们引入了对两个分布的全球距离分布分离(GD)的约束,以鼓励从全球视图中明确分离正面和负面样本。我们将两个全球距离分布建模为高斯分布,并将两个分布分开,同时鼓励它们在无监督的训练过程中。特别是,为了从全球视图对分布进行建模,并促进了分布和与GDS相关的损失的及时更新,我们利用了一种动量更新机制来构建和维护分布参数(平均值和差异),并计算培训期间的飞行损失。提出了基于分布的硬采矿,以进一步促进两个分布的分离。我们验证了无监督的REID网络中GDS约束的有效性。在多个REID基准数据集上进行的广泛实验表明,我们的方法可以显着改善基线,并实现最先进的性能。
Supervised person re-identification (ReID) often has poor scalability and usability in real-world deployments due to domain gaps and the lack of annotations for the target domain data. Unsupervised person ReID through domain adaptation is attractive yet challenging. Existing unsupervised ReID approaches often fail in correctly identifying the positive samples and negative samples through the distance-based matching/ranking. The two distributions of distances for positive sample pairs (Pos-distr) and negative sample pairs (Neg-distr) are often not well separated, having large overlap. To address this problem, we introduce a global distance-distributions separation (GDS) constraint over the two distributions to encourage the clear separation of positive and negative samples from a global view. We model the two global distance distributions as Gaussian distributions and push apart the two distributions while encouraging their sharpness in the unsupervised training process. Particularly, to model the distributions from a global view and facilitate the timely updating of the distributions and the GDS related losses, we leverage a momentum update mechanism for building and maintaining the distribution parameters (mean and variance) and calculate the loss on the fly during the training. Distribution-based hard mining is proposed to further promote the separation of the two distributions. We validate the effectiveness of the GDS constraint in unsupervised ReID networks. Extensive experiments on multiple ReID benchmark datasets show our method leads to significant improvement over the baselines and achieves the state-of-the-art performance.