Multimodal Data Augmentation for Visual-Infrared Person ReID with Corrupted Data
Arthur Josi, Mahdi Alehdaghi, Rafael M. O. Cruz, Eric Granger

TL;DR
This paper introduces a specialized multimodal data augmentation strategy for visible-infrared person re-identification, improving robustness against corrupted data like noise and weather effects by fostering modality collaboration.
Contribution
The proposed data augmentation method is specifically designed for V-I person ReID, enhancing model generalization and robustness to corruption by encouraging modality collaboration and feature selection.
Findings
Improved ReID accuracy on corrupted datasets
Enhanced modality collaboration in feature learning
Outperforms unimodal data augmentation methods
Abstract
The re-identification (ReID) of individuals over a complex network of cameras is a challenging task, especially under real-world surveillance conditions. Several deep learning models have been proposed for visible-infrared (V-I) person ReID to recognize individuals from images captured using RGB and IR cameras. However, performance may decline considerably if RGB and IR images captured at test time are corrupted (e.g., noise, blur, and weather conditions). Although various data augmentation (DA) methods have been explored to improve the generalization capacity, these are not adapted for V-I person ReID. In this paper, a specialized DA strategy is proposed to address this multimodal setting. Given both the V and I modalities, this strategy allows to diminish the impact of corruption on the accuracy of deep person ReID models. Corruption may be modality-specific, and an additional…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Advanced Neural Network Applications · Domain Adaptation and Few-Shot Learning
MethodsTest
