FOCUS: Fine-grained Optimization with Semantic Guided Understanding for Pedestrian Attributes Recognition
Hongyan An, Kuan Zhu, Xin He, Haiyun Guo, Chaoyang Zhao, Ming Tang, Jinqiao Wang

TL;DR
FOCUS introduces an adaptive, fine-grained approach for pedestrian attribute recognition that leverages semantic guidance and cross-attention to improve accuracy and generalization, especially for unseen attributes.
Contribution
The paper proposes a novel method combining multi-granularity tokens, attribute-guided feature extraction, and contrastive learning to enhance fine-grained pedestrian attribute recognition.
Findings
Outperforms existing methods on PA100K, PETA, and RAPv1 datasets.
Demonstrates strong generalization to unseen attributes.
Effectively captures attribute-specific features through semantic guidance.
Abstract
Pedestrian attribute recognition (PAR) is a fundamental perception task in intelligent transportation and security. To tackle this fine-grained task, most existing methods focus on extracting regional features to enrich attribute information. However, a regional feature is typically used to predict a fixed set of pre-defined attributes in these methods, which limits the performance and practicality in two aspects: 1) Regional features may compromise fine-grained patterns unique to certain attributes in favor of capturing common characteristics shared across attributes. 2) Regional features cannot generalize to predict unseen attributes in the test time. In this paper, we propose the \textbf{F}ine-grained \textbf{O}ptimization with semanti\textbf{C} g\textbf{U}ided under\textbf{S}tanding (FOCUS) approach for PAR, which adaptively extracts fine-grained attribute-level features for each…
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Taxonomy
TopicsAdvanced Neural Network Applications · Multimodal Machine Learning Applications · Domain Adaptation and Few-Shot Learning
MethodsContrastive Learning · Sparse Evolutionary Training · Focus
