From Attributes to Natural Language: A Survey and Foresight on Text-based Person Re-identification
Fanzhi Jiang, Su Yang, Mark W. Jones, Liumei Zhang

TL;DR
This paper provides a comprehensive survey and future outlook on text-based person re-identification, covering datasets, strategies, architectures, and challenges in the field.
Contribution
It introduces a detailed taxonomy and baseline architecture for text-based person Re-ID, addressing existing gaps and outlining future research directions.
Findings
Reviewed benchmark datasets and metrics for text-based Re-ID
Analyzed feature extraction strategies and network architectures
Identified key challenges and potential future research avenues
Abstract
Text-based person re-identification (Re-ID) is a challenging topic in the field of complex multimodal analysis, its ultimate aim is to recognize specific pedestrians by scrutinizing attributes/natural language descriptions. Despite the wide range of applicable areas such as security surveillance, video retrieval, person tracking, and social media analytics, there is a notable absence of comprehensive reviews dedicated to summarizing the text-based person Re-ID from a technical perspective. To address this gap, we propose to introduce a taxonomy spanning Evaluation, Strategy, Architecture, and Optimization dimensions, providing a comprehensive survey of the text-based person Re-ID task. We start by laying the groundwork for text-based person Re-ID, elucidating fundamental concepts related to attribute/natural language-based identification. Then a thorough examination of existing…
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Taxonomy
TopicsAuthorship Attribution and Profiling · Video Surveillance and Tracking Methods · Gait Recognition and Analysis
