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Models/Playground-v2.5-1024px-aesthetic

Playground-v2.5-1024px-aesthetic

Reported on 7 benchmarks across 1 task · 1 paper · 4 SOTA

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

Medical7 results

  • Image GenerationonWISE
    Cultural· 2024-02-27
    0.49
    best: 0.76 (Bagel (w/ cot))
    SOTA
    Playground v2.5: Three Insights towards Enhancing Aesthetic Quality in Text-to-Image GenerationarXiv:2402.17245
  • Image GenerationonWISE
    Overall· 2024-02-27
    0.49
    best: 0.71 (MindOmni (w/ cot))
    SOTA
    Playground v2.5: Three Insights towards Enhancing Aesthetic Quality in Text-to-Image GenerationarXiv:2402.17245
  • Image GenerationonWISE
    Space· 2024-02-27
    0.55
    best: 0.76 (MindOmni (w/ cot))
    SOTA
    Playground v2.5: Three Insights towards Enhancing Aesthetic Quality in Text-to-Image GenerationarXiv:2402.17245
  • Image GenerationonWISE
    Time· 2024-02-27
    0.58
    best: 0.7 (MindOmni (w/ cot))
    SOTA
    Playground v2.5: Three Insights towards Enhancing Aesthetic Quality in Text-to-Image GenerationarXiv:2402.17245
  • Image GenerationonWISE
    Biology· 2024-02-27
    0.43
    best: 0.76 (MindOmni (w/ cot))
    Playground v2.5: Three Insights towards Enhancing Aesthetic Quality in Text-to-Image GenerationarXiv:2402.17245
  • Image GenerationonWISE
    Chemistry· 2024-02-27
    0.33
    best: 0.58 (Bagel (w/ cot))
    Playground v2.5: Three Insights towards Enhancing Aesthetic Quality in Text-to-Image GenerationarXiv:2402.17245
  • Image GenerationonWISE
    Physics· 2024-02-27
    0.48
    best: 0.75 (Bagel (w/ cot))
    Playground v2.5: Three Insights towards Enhancing Aesthetic Quality in Text-to-Image GenerationarXiv:2402.17245