In this paper, we propose a novel method called AlignedReID that extracts a global feature which is jointly learned with local features. Global feature learning benefits greatly from local feature learning, which performs an alignment/matching by calculating the shortest path between two sets of local features, without requiring extra supervision. After the joint learning, we only keep the global feature to compute the similarities between images. Our method achieves rank-1 accuracy of 94.4% on Market1501 and 97.8% on CUHK03, outperforming state-of-the-art methods by a large margin. We also evaluate human-level performance and demonstrate that our method is the first to surpass human-level performance on Market1501 and CUHK03, two widely used Person ReID datasets.
翻译:在本文中,我们提出了一个名为“AgionalReID”的新颖方法,它提取了一个与当地特征共同学习的全球特征。全球特征学习从地方特征学习中大有裨益,通过计算两组本地特征之间的最短路径,进行校准/匹配,而不需要额外的监督。在联合学习之后,我们只保留全球特征来计算图像之间的相似之处。我们的方法在市场1501和CUHK03上达到了94.4%的一级精确度,在CUHK03上达到了97.8%的精确度,大大优于最先进的方法。我们还评估了人类层面的绩效,并证明我们的方法是第一个在市场1501和CUHK03上超过了人类水平的性能,这是两个被广泛使用的个人再识别数据集。