CVSep 19, 2025

A review of Recent Techniques for Person Re-Identification

arXiv:2509.22690v216 citationsh-index: 29Mach Vis Appl
Originality Synthesis-oriented
AI Analysis

It addresses the scalability challenges of data labeling in surveillance for researchers and practitioners, but is incremental as it synthesizes existing work without introducing new methods.

This survey reviews recent techniques in person re-identification, focusing on supervised methods that have reached maturity with limited room for improvement and unsupervised methods that are narrowing the performance gap with supervised approaches.

Person re-identification (ReId), a crucial task in surveillance, involves matching individuals across different camera views. The advent of Deep Learning, especially supervised techniques like Convolutional Neural Networks and Attention Mechanisms, has significantly enhanced person Re-ID. However, the success of supervised approaches hinges on vast amounts of annotated data, posing scalability challenges in data labeling and computational costs. To address these limitations, recent research has shifted towards unsupervised person re-identification. Leveraging abundant unlabeled data, unsupervised methods aim to overcome the need for pairwise labelled data. Although traditionally trailing behind supervised approaches, unsupervised techniques have shown promising developments in recent years, signalling a narrowing performance gap. Motivated by this evolving landscape, our survey pursues two primary objectives. First, we review and categorize significant publications in supervised person re-identification, providing an in-depth overview of the current state-of-the-art and emphasizing little room for further improvement in this domain. Second, we explore the latest advancements in unsupervised person re-identification over the past three years, offering insights into emerging trends and shedding light on the potential convergence of performance between supervised and unsupervised paradigms. This dual-focus survey aims to contribute to the evolving narrative of person re-identification, capturing both the mature landscape of supervised techniques and the promising outcomes in the realm of unsupervised learning.

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