基于增强聚类样本的完全无监督人再识别

Xiumei Chen, Xiangtao Zheng, Kaijian Zhu, Xiaoqiang Lu
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引用次数: 0

摘要

完全无监督人再识别的目的是用未标记的人图像训练一个判别模型。大多数现有的方法首先通过聚类图像特征(卷积特征)生成伪标签,然后用伪标签对卷积神经网络(CNN)进行微调。然而,这些方法受到伪标签质量的极大限制。本文引入聚类样本增强方法,提高伪标签样本的可靠性,方便CNN训练。具体来说,在生成伪标签时,只选择具有高置信度伪标签预测的样本。此外,为了增强选择的训练样本,采用了两种不同的图像变换,并结合特定设计的损失函数来提高模型的性能。实验证明了该方法的有效性。具体而言,该方法在Market-1501上实现了87.1%的rank-1和70.2%的mAP准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fully Unsupervised Person Re-Identification by Enhancing Cluster Samples
Fully unsupervised person re-identification aims to train a discriminative model with unlabeled person images. Most existing methods first generate pseudo labels by clustering image features (convolutional features) and then fine-tune the convolutional neural network (CNN) with pseudo labels. However, these methods are greatly limited by the quality of the pseudo labels. In this paper, a cluster sample enhancement method is introduced to increase the reliability of pseudo-label samples to facilitate the CNN training. Specifically, when generating pseudo labels, only the samples with high-confidence pseudo-label predictions are selected. In addition, to enhance the selected samples for training, two different image transformations are adopted and coupled with specific-design loss functions to boost the model performance. Experiments demonstrate the effectiveness of the proposed method. Concretely, the proposed method achieves 87.1% rank-1 and 70.2% mAP accuracy on Market-1501.
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