CVAILGFeb 10, 2025

Unconstrained Body Recognition at Altitude and Range: Comparing Four Approaches

arXiv:2502.07130v13 citationsh-index: 12FG
Originality Incremental advance
AI Analysis

It addresses the problem of persistent identity recognition for surveillance and security applications, but it is incremental as it builds on existing methods with architectural improvements.

This study tackled long-term person identification using body shape by comparing four approaches, including new Vision Transformer-based models, and found that they performed well across diverse conditions, with the Swin-BIDDS model achieving a top-1 accuracy of 85.7% on the MARS dataset.

This study presents an investigation of four distinct approaches to long-term person identification using body shape. Unlike short-term re-identification systems that rely on temporary features (e.g., clothing), we focus on learning persistent body shape characteristics that remain stable over time. We introduce a body identification model based on a Vision Transformer (ViT) (Body Identification from Diverse Datasets, BIDDS) and on a Swin-ViT model (Swin-BIDDS). We also expand on previous approaches based on the Linguistic and Non-linguistic Core ResNet Identity Models (LCRIM and NLCRIM), but with improved training. All models are trained on a large and diverse dataset of over 1.9 million images of approximately 5k identities across 9 databases. Performance was evaluated on standard re-identification benchmark datasets (MARS, MSMT17, Outdoor Gait, DeepChange) and on an unconstrained dataset that includes images at a distance (from close-range to 1000m), at altitude (from an unmanned aerial vehicle, UAV), and with clothing change. A comparative analysis across these models provides insights into how different backbone architectures and input image sizes impact long-term body identification performance across real-world conditions.

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