Deep Self-Paced Learning for Person Re-Identification
Sanping Zhou, Jinjun Wang, Deyu Meng, Xiaomeng Xin, Yubing Li, Yihong, Gong, Nanning Zheng

TL;DR
This paper introduces a deep self-paced learning algorithm for person re-identification that emphasizes high-confidence samples and suppresses noisy data, improving feature discrimination across camera views.
Contribution
The novel DSPL algorithm combines adaptive sample weighting with symmetric regularization and a part-based neural network for enhanced person Re-ID performance.
Findings
Outperforms state-of-the-art methods on benchmark datasets.
Effectively suppresses noisy samples during training.
Learned features are more discriminative and robust.
Abstract
Person re-identification (Re-ID) usually suffers from noisy samples with background clutter and mutual occlusion, which makes it extremely difficult to distinguish different individuals across the disjoint camera views. In this paper, we propose a novel deep self-paced learning (DSPL) algorithm to alleviate this problem, in which we apply a self-paced constraint and symmetric regularization to help the relative distance metric training the deep neural network, so as to learn the stable and discriminative features for person Re-ID. Firstly, we propose a soft polynomial regularizer term which can derive the adaptive weights to samples based on both the training loss and model age. As a result, the high-confidence fidelity samples will be emphasized and the low-confidence noisy samples will be suppressed at early stage of the whole training process. Such a learning regime is naturally…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Gait Recognition and Analysis · Automated Road and Building Extraction
