Attention-based Few-Shot Person Re-identification Using Meta Learning
Alireza Rahimpour, Hairong Qi

TL;DR
This paper introduces ARM, an attention-based meta-learning model for few-shot person re-identification, effectively handling new identities with limited examples by leveraging a novel feature encoding scheme and meta-learning framework.
Contribution
The paper proposes a new attention-based feature encoding scheme within a meta-learning framework specifically designed for few-shot person re-identification, improving discriminative power and adaptability.
Findings
ARM outperforms state-of-the-art on multiple datasets
Effective handling of new identities with few examples
Enhanced discriminative feature encoding scheme
Abstract
In this paper, we investigate the challenging task of person re-identification from a new perspective and propose an end-to-end attention-based architecture for few-shot re-identification through meta-learning. The motivation for this task lies in the fact that humans, can usually identify another person after just seeing that given person a few times (or even once) by attending to their memory. On the other hand, the unique nature of the person re-identification problem, i.e., only few examples exist per identity and new identities always appearing during testing, calls for a few shot learning architecture with the capacity of handling new identities. Hence, we frame the problem within a meta-learning setting, where a neural network based meta-learner is trained to optimize a learner i.e., an attention-based matching function. Another challenge of the person re-identification problem…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Human Pose and Action Recognition · Face recognition and analysis
