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Mobile Networks and Management. 13th EAI International Conference, MONAMI 2023, Yingtan, China, October 27-29, 2023, Proceedings

Research Article

Improving Pedestrian Attribute Recognition with Dense Feature Pyramid and Mixed Pooling

Cite
BibTeX Plain Text
  • @INPROCEEDINGS{10.1007/978-3-031-55471-1_17,
        author={He Xiao and Chen Zou and Yaosheng Chen and Sujia Gong and Siwen Dong},
        title={Improving Pedestrian Attribute Recognition with Dense Feature Pyramid and Mixed Pooling},
        proceedings={Mobile Networks and Management. 13th EAI International Conference, MONAMI 2023, Yingtan, China, October 27-29, 2023, Proceedings},
        proceedings_a={MONAMI},
        year={2024},
        month={3},
        keywords={Convolutional neural network Feature pyramid Multi-scale fusion Mixed pooling Pedestrian attribute recognition},
        doi={10.1007/978-3-031-55471-1_17}
    }
    
  • He Xiao
    Chen Zou
    Yaosheng Chen
    Sujia Gong
    Siwen Dong
    Year: 2024
    Improving Pedestrian Attribute Recognition with Dense Feature Pyramid and Mixed Pooling
    MONAMI
    Springer
    DOI: 10.1007/978-3-031-55471-1_17
He Xiao1,*, Chen Zou1, Yaosheng Chen1, Sujia Gong1, Siwen Dong1
  • 1: School of Software Engineering, Jiangxi University of Science and Technology, Nanchang
*Contact email: xiaohe804@gmail.com

Abstract

In the field of computer vision, pedestrian attribute recognition plays a crucial role in pedestrian detection and pedestrian re-identification. However, this task faces challenges such as blurry images, difficulty in recognizing fine-grained features, and overlooking relationships between pedestrian attributes. To address these challenges, we propose a novel method for pedestrian attribute recognition. Our method is based on convolutional neural networks and incorporates a feature pyramid structure that is specifically designed for the task of pedestrian attribute recognition (PAR). Additionally, we enhance feature information by employing multi-scale feature fusion. Furthermore, our proposed AIIM module facilitates interactions between different attributes by establishing both remote dependencies and short-range dependencies. Through comprehensive experimentation, we have validated the effectiveness of our method and achieved state-of-the-art results. Specifically, our method has achieved impressive average accuracies (mA) of 86.27%, 83.45%, and 81.56% on well-known datasets such as PETA, RAP, and PA100k, respectively.

Keywords
Convolutional neural network Feature pyramid Multi-scale fusion Mixed pooling Pedestrian attribute recognition
Published
2024-03-17
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-031-55471-1_17
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