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Robust Anchor Embedding for Unsupervised Video Person re-IDentification in the Wild

机译:野外无人监督视频人重新识别的鲁棒锚嵌入

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This paper addresses the scalability and robustness issues of estimating labels from imbalanced unlabeled data for unsupervised video-based person re-identification (re-ID). To achieve it, we propose a novel Robust AnChor Embedding (RACE) framework via deep feature representation learning for large-scale unsupervised video re-ID. Within this framework, anchor sequences representing different persons are firstly selected to formulate an anchor graph which also initializes the CNN model to get discriminative feature representations for later label estimation. To accurately estimate labels from unlabeled sequences with noisy frames, robust anchor embedding is introduced based on the regularized affine hull. Efficiency is ensured with kNN anchors embedding instead of the whole anchor set under manifold assumptions. After that, a robust and efficient top-k counts label prediction strategy is proposed to predict the labels of unlabeled image sequences. With the newly estimated labeled sequences, the unified anchor embedding framework enables the feature learning process to be further facilitated. Extensive experimental results on the large-scale dataset show that the proposed method outperforms existing unsupervised video re-ID methods.
机译:本文解决了可伸缩性和鲁棒性问题,该问题是从不平衡的无标签数据中估计标签,以进行无监督的基于视频的人员重新识别(re-ID)。为了实现这一目标,我们通过深度特征表示学习为大规模无监督视频re-ID提出了一种新颖的鲁棒AnChor嵌入(RACE)框架。在此框架内,首先选择代表不同人的锚定序列以制定锚定图,该锚定图还初始化CNN模型以获取可辨别的特征表示形式,以便以后进行标签估计。为了从带有噪声帧的未标记序列中准确估计标签,基于正则仿射外壳引入了鲁棒的锚嵌入。通过嵌入kNN锚点而不是在多个假设下设置整个锚点来确保效率。此后,提出了一种鲁棒且有效的top-k计数标签预测策略,以预测未标记图像序列的标签。利用新估计的标记序列,统一的锚嵌入框架使特征学习过程更加便捷。在大规模数据集上的大量实验结果表明,该方法优于现有的无监督视频re-ID方法。

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