Cross-Domain Pedestrian Attribute Recognition: Evaluation Criteria, a New Baseline and Remote Sensor-Based Application
Chao Zhu, Liu Yang, Zihang Han

TL;DR
This paper introduces a new task for recognizing pedestrian attributes across different domains and proposes a baseline method to address domain differences in surveillance data.
Contribution
The paper introduces the novel task of cross-domain pedestrian attribute recognition and proposes a new baseline method for it.
Findings
The new CD_PAR task is formally introduced with evaluation criteria.
The proposed LDCD_PAR method effectively obtains domain-invariant features.
Experiments validate the effectiveness of the method in remote sensor-based applications.
Abstract
The task of pedestrian attribute recognition (PAR) identifies a set of predefined attributes in pedestrian images from surveillance videos or collected imagery, which are often adopted as important mid-level features in higher-level tasks, such as person re-identification, pedestrian detection, etc. In these cases, the domain differences between datasets of different tasks will lead to clear performance degradation of the mainstream PAR methods. This degradation becomes significant in the application of remote sensor-based PAR, since the model is trained on traditional fixed-camera visual data while applied on UAV-based remote sensor data, facing more cross-domain challenges. To address these issues, we formally introduce in this paper the task of cross-domain pedestrian attribute recognition (CD_PAR) for the first time, and efficiently establish a set of evaluation criteria for this…
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Taxonomy
TopicsAdvanced Neural Network Applications · Video Surveillance and Tracking Methods · Domain Adaptation and Few-Shot Learning
