Batch Coherence-Driven Network for Part-aware Person Re-Identification
Kan Wang, Pengfei Wang, Changxing Ding, and Dacheng Tao

TL;DR
This paper introduces BCD-Net, a novel framework for person re-identification that learns aligned part features without explicit body part detection, using batch-level supervision and coherence constraints.
Contribution
The proposed BCD-Net bypasses body part detection by leveraging batch coherence and introduces novel batch-level supervision for part feature learning.
Findings
Achieves state-of-the-art results on four large-scale ReID benchmarks.
Effectively learns semantically aligned part features without explicit part detection.
Demonstrates robustness and efficiency in low-quality images.
Abstract
Existing part-aware person re-identification methods typically employ two separate steps: namely, body part detection and part-level feature extraction. However, part detection introduces an additional computational cost and is inherently challenging for low-quality images. Accordingly, in this work, we propose a simple framework named Batch Coherence-Driven Network (BCD-Net) that bypasses body part detection during both the training and testing phases while still learning semantically aligned part features. Our key observation is that the statistics in a batch of images are stable, and therefore that batch-level constraints are robust. First, we introduce a batch coherence-guided channel attention (BCCA) module that highlights the relevant channels for each respective part from the output of a deep backbone model. We investigate channelpart correspondence using a batch of training…
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