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Models/PCL-CLIP (L_pcl)

PCL-CLIP (L_pcl)

Reported on 7 benchmarks across 1 task · 1 paper

Note: results are matched by exact model name. Different papers may use the same name for different model variants.

Computer Vision7 results

  • Person Re-IdentificationonMSMT17
    Rank-1· 2023-10-26
    89.2
    best: 91.7 (SOLIDER (with re-ranking))
    Prototypical Contrastive Learning-based CLIP Fine-tuning for Object Re-identificationarXiv:2310.17218
  • Person Re-IdentificationonMSMT17
    Rank-10· 2023-10-26
    95.8
    best: 96 (PCL-CLIP (L_pcl+L_id))
    Prototypical Contrastive Learning-based CLIP Fine-tuning for Object Re-identificationarXiv:2310.17218
  • Person Re-IdentificationonMSMT17
    Rank-5· 2023-10-26
    94.7
    Prototypical Contrastive Learning-based CLIP Fine-tuning for Object Re-identificationarXiv:2310.17218
  • Person Re-IdentificationonMSMT17
    mAP· 2023-10-26
    73.8
    best: 86.7 (CLIP-ReID (with re-ranking))
    Prototypical Contrastive Learning-based CLIP Fine-tuning for Object Re-identificationarXiv:2310.17218
  • Person Re-IdentificationonMarket-1501
    Rank-1· 2023-10-26
    96.1
    best: 98 (st-ReID(RE, RK))
    Prototypical Contrastive Learning-based CLIP Fine-tuning for Object Re-identificationarXiv:2310.17218
  • Person Re-IdentificationonMarket-1501
    Rank-5· 2023-10-26
    98.8
    best: 98.9 (st-ReID(RE, RK))
    Prototypical Contrastive Learning-based CLIP Fine-tuning for Object Re-identificationarXiv:2310.17218
  • Person Re-IdentificationonMarket-1501
    mAP· 2023-10-26
    91
    best: 96.21 (Unsupervised Pre-training (ResNet101+RK))
    Prototypical Contrastive Learning-based CLIP Fine-tuning for Object Re-identificationarXiv:2310.17218