论文标题

上下文感知的图形卷积网络,用于重新识别

Context-Aware Graph Convolution Network for Target Re-identification

论文作者

Ji, Deyi, Wang, Haoran, Hu, Hanzhe, Gan, Weihao, Wu, Wei, Yan, Junjie

论文摘要

大多数现有的重新识别方法都集中于通过深度卷积网络学习鲁棒和歧视性特征。但是,他们中的许多人分别考虑内容相似性,并且无法使用查询和画廊集的上下文信息,例如探测器 - 加勒和画廊 - 加利尔关系,因此由于有限甚至误导性信息,硬样品可能无法得到很好的解决。在本文中,我们提出了一个新颖的上下文感知图卷积网络(CAGCN),其中探测器关系被编码到图节点中,并且图形边缘连接受图库 - 盖洛里关系很好地控制。这样,在图形推理期间,可以用上下文信息流以及其他简单的样本来解决硬性样本。具体而言,我们采用有效的硬画廊采样器来获得积极样本的高召回,同时保持合理的图形尺寸,这也可以削弱训练过程中的不平衡问题,其计算复杂性低。实例表明,所提出的方法可以在人的插件中实现人的最新性能,并在插件和播放时装销量和播放时装销量,并以有限的销售。

Most existing re-identification methods focus on learning robust and discriminative features with deep convolution networks. However, many of them consider content similarity separately and fail to utilize the context information of the query and gallery sets, e.g. probe-gallery and gallery-gallery relations, thus hard samples may not be well solved due to the limited or even misleading information. In this paper, we present a novel Context-Aware Graph Convolution Network (CAGCN), where the probe-gallery relations are encoded into the graph nodes and the graph edge connections are well controlled by the gallery-gallery relations. In this way, hard samples can be addressed with the context information flows among other easy samples during the graph reasoning. Specifically, we adopt an effective hard gallery sampler to obtain high recall for positive samples while keeping a reasonable graph size, which can also weaken the imbalanced problem in training process with low computation complexity.Experiments show that the proposed method achieves state-of-the-art performance on both person and vehicle re-identification datasets in a plug and play fashion with limited overhead.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源