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Batch Feature Erasing for Person Re-identification and Beyond

2018-11-17 08:49:04
Zuozhuo Dai, Mingqiang Chen, Siyu Zhu, Ping Tan

Abstract

This paper presents a new training mechanism called Batch Feature Erasing (BFE) for person re-identification. We apply this strategy to train a novel network with two branches and employing the ResNet-50 as the backbone. The two branches consist of a conventional global branch and a feature erasing branch where the BFE strategy is applied. When training the feature erasing branch, we randomly erase the same region of all the feature maps in a batch. The network then concatenates features from the two branches for person re-identification. Albeit simple, our method achieves state-of-the-art on person re-identification and is applicable to general metric learning tasks in image retrieval problems. For instance, we achieve 75.4% Rank1 accuracy on the CUHK03-Detect dataset and 83.0% Recall-1 score on the Stanford Online Products dataset, outperforming the existed works by a large margin (more than 6%).

Abstract (translated)

URL

https://arxiv.org/abs/1811.07130

PDF

https://arxiv.org/pdf/1811.07130.pdf


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