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End-to-end human parsing and detection optimized for resource-constrained devices
Journal article   Peer reviewed

End-to-end human parsing and detection optimized for resource-constrained devices

Md Imran Hosen, Tarkan Aydin and Md Baharul Islam
Scientific reports, Vol.16(1), 943
12-10-2025
PMID: 41372320

Abstract

Resource-constrained devices Multi-human parsing Polygons annotation Self-attention
Human parsing, a vital task in human-centric analysis, involves segmenting clothing and body parts for individual association. Existing methods often rely on auxiliary inputs like detection and edge prediction, limiting their suitability for resource-constrained devices. To address this, we propose an end-to-end framework that integrates a transformer based self-attention module to enhance contextual understanding while being optimized for low-resource environments. We also introduce bounding-polygon annotations to facilitate simultaneous detection and parsing. Our method achieves fine-grained results in a single pass, significantly improving inference speed without sacrificing accuracy. Real-world validation on Raspberry Pi demonstrates its effectiveness and efficiency in resource-constrained scenarios.
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