This paper addresses unsupervised person re-identification (Re-ID) using multi-label prediction and classification based on graph-structural insight. Our method extracts features from person images and produces a graph that consists of the features and a pairwise similarity of them as nodes and edges, respectively. Based on the graph, the proposed graph structure based multi-label prediction (GSMLP) method predicts multi-labels by considering the pairwise similarity and the adjacency node distribution of each node. The multi-labels created by GSMLP are applied to the proposed selective multi-label classification (SMLC) loss. SMLC integrates a hard-sample mining scheme and a multi-label classification. The proposed GSMLP and SMLC boost the performance of unsupervised person Re-ID without any pre-labelled dataset. Experimental results justify the superiority of the proposed method in unsupervised person Re-ID by producing state-of-the-art performance. The source code for this paper is publicly available on 'https://github.com/uknownpioneer/GSMLP-SMLC.git'.
翻译:本文使用基于图形结构洞察的多标签预测和分类,处理无人监督的人重新识别(Re-ID)的问题。我们的方法从个人图像中提取特征,并制作一个由特征和相近相似之处构成的图表,分别作为节点和边缘。根据这个图,拟议的基于图形结构的多标签预测(GSMLP)方法通过考虑每个节点的配对相似性和相近节点分布来预测多标签。GSMLP创建的多标签适用于拟议的选择性多标签分类(SMLC)损失。SMLC将硬抽样采矿计划和多标签分类组合在一起。拟议的GSMLP和SMLC在没有预贴标签数据集的情况下促进无人监督的人再识别的性能。实验结果证明拟议方法在非超人再识别中的优越性能,通过产生国家艺术性能。本文的源代码公布在“https://giub.com/upigionone/GSMLC.SMLA.