Beyond Triplet Loss: A Deep Quadruplet Network for Person Re-Identification | Spotlight 1-2C

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  • เผยแพร่เมื่อ 5 ก.ย. 2024
  • Weihua Chen, Xiaotang Chen, Jianguo Zhang, Kaiqi Huang
    Person re-identification (ReID) is an important task in wide area video surveillance which focuses on identifying people across different cameras. Recently, deep learning networks with a triplet loss become a common framework for person ReID. However, the triplet loss pays main attentions on obtaining correct orders on the training set. It still suffers from a weaker generalization capability from the training set to the testing set, thus resulting in inferior performance. In this paper, we design a quadruplet loss, which can lead to the model output with a larger inter-class variation and a smaller intra-class variation compared to the triplet loss. As a result, our model has a better generalization ability and can achieve a higher performance on the testing set. In particular, a quadruplet deep network using a margin-based online hard negative mining is proposed based on the quadruplet loss for the person ReID. In extensive experiments, the proposed network outperforms most of the state-of-the-art algorithms on representative datasets which clearly demonstrates the effectiveness of our proposed method.

ความคิดเห็น • 3

  • @csedepartment236
    @csedepartment236 10 หลายเดือนก่อน

    Thank You Sir!

  • @youngmin8102
    @youngmin8102 7 ปีที่แล้ว +1

    Great work! It's a more advanced picture. There was a lot of help.

  • @big_lazy_cat
    @big_lazy_cat 6 ปีที่แล้ว

    怎样才能联系到作者?