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Models/X2-VLM (base)

X2-VLM (base)

Reported on 51 benchmarks across 8 tasks · 1 paper

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

Miscellaneous24 results

  • Image Retrieval with Multi-Modal QueryonFlickr30k
    Image-to-text R@1· uses extra data· 2022-11-22
    98.5
    best: 98.8 (X2-VLM (large))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonFlickr30k
    Image-to-text R@10· uses extra data· 2022-11-22
    100
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonFlickr30k
    Image-to-text R@5· uses extra data· 2022-11-22
    100
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonFlickr30k
    Text-to-image R@1· uses extra data· 2022-11-22
    90.4
    best: 93.3 (ERNIE-ViL 2.0)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonFlickr30k
    Text-to-image R@10· uses extra data· 2022-11-22
    99.3
    best: 99.8 (ERNIE-ViL 2.0)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonFlickr30k
    Text-to-image R@5· uses extra data· 2022-11-22
    98.2
    best: 99.5 (M2-Encoder)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonCOCO 2014
    Image-to-text R@1· uses extra data· 2022-11-22
    83.5
    best: 84.8 (BEiT-3)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonCOCO 2014
    Image-to-text R@10· uses extra data· 2022-11-22
    98.5
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonCOCO 2014
    Image-to-text R@5· uses extra data· 2022-11-22
    96.3
    best: 96.5 (X2-VLM (large))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonCOCO 2014
    Text-to-image R@1· uses extra data· 2022-11-22
    66.2
    best: 68 (VAST)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonCOCO 2014
    Text-to-image R@10· uses extra data· 2022-11-22
    92.2
    best: 92.8 (VAST)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Image Retrieval with Multi-Modal QueryonCOCO 2014
    Text-to-image R@5· uses extra data· 2022-11-22
    87.1
    best: 92.8 (BEiT-3)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonFlickr30k
    Image-to-text R@1· uses extra data· 2022-11-22
    98.5
    best: 98.8 (X2-VLM (large))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonFlickr30k
    Image-to-text R@10· uses extra data· 2022-11-22
    100
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonFlickr30k
    Image-to-text R@5· uses extra data· 2022-11-22
    100
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonFlickr30k
    Text-to-image R@1· uses extra data· 2022-11-22
    90.4
    best: 93.3 (ERNIE-ViL 2.0)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonFlickr30k
    Text-to-image R@10· uses extra data· 2022-11-22
    99.3
    best: 99.8 (ERNIE-ViL 2.0)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonFlickr30k
    Text-to-image R@5· uses extra data· 2022-11-22
    98.2
    best: 99.4 (ERNIE-ViL 2.0)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonCOCO 2014
    Image-to-text R@1· uses extra data· 2022-11-22
    83.5
    best: 84.8 (BEiT-3)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonCOCO 2014
    Image-to-text R@10· uses extra data· 2022-11-22
    98.5
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonCOCO 2014
    Image-to-text R@5· uses extra data· 2022-11-22
    96.3
    best: 96.5 (X2-VLM (large))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonCOCO 2014
    Text-to-image R@1· uses extra data· 2022-11-22
    66.2
    best: 68 (VAST)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonCOCO 2014
    Text-to-image R@10· uses extra data· 2022-11-22
    92.2
    best: 92.8 (VAST)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal Information RetrievalonCOCO 2014
    Text-to-image R@5· uses extra data· 2022-11-22
    87.1
    best: 92.8 (BEiT-3)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402

Natural Language Processing16 results

  • Visual Question Answering (VQA)onMSRVTT-QA
    Accuracy· uses extra data· 2022-11-22
    0.45
    best: 0.496 (VLAB)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Visual Question Answering (VQA)onMSVD-QA
    Accuracy· uses extra data· 2022-11-22
    0.528
    best: 0.61 (VLAB)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Visual Question Answering (VQA)onVQA v2 test-dev
    Accuracy· 2022-11-22
    80.4
    best: 84.3 (PaLI)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Visual Question Answering (VQA)onVQA v2 test-std
    overall· 2022-11-22
    80.2
    best: 84.03 (BEiT-3)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonFlickr30k
    Image-to-text R@1· uses extra data· 2022-11-22
    98.5
    best: 98.8 (X2-VLM (large))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonFlickr30k
    Image-to-text R@10· uses extra data· 2022-11-22
    100
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonFlickr30k
    Image-to-text R@5· uses extra data· 2022-11-22
    100
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonFlickr30k
    Text-to-image R@1· uses extra data· 2022-11-22
    90.4
    best: 93.3 (ERNIE-ViL 2.0)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonFlickr30k
    Text-to-image R@10· uses extra data· 2022-11-22
    99.3
    best: 99.8 (ERNIE-ViL 2.0)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonFlickr30k
    Text-to-image R@5· uses extra data· 2022-11-22
    98.2
    best: 99.4 (ERNIE-ViL 2.0)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonCOCO 2014
    Image-to-text R@1· uses extra data· 2022-11-22
    83.5
    best: 84.8 (BEiT-3)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonCOCO 2014
    Image-to-text R@10· uses extra data· 2022-11-22
    98.5
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonCOCO 2014
    Image-to-text R@5· uses extra data· 2022-11-22
    96.3
    best: 96.5 (X2-VLM (large))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonCOCO 2014
    Text-to-image R@1· uses extra data· 2022-11-22
    66.2
    best: 68 (VAST)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonCOCO 2014
    Text-to-image R@10· uses extra data· 2022-11-22
    92.2
    best: 92.8 (VAST)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Cross-Modal RetrievalonCOCO 2014
    Text-to-image R@5· uses extra data· 2022-11-22
    87.1
    best: 92.8 (BEiT-3)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402

Computer Vision9 results

  • VideoonMSR-VTT-1kA
    text-to-video R@1· 2022-11-22
    47.6
    best: 62.9 (HunYuan_tvr (huge))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • VideoonMSR-VTT-1kA
    text-to-video R@10· 2022-11-22
    84.2
    best: 90.8 (HunYuan_tvr (huge))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • VideoonMSR-VTT-1kA
    text-to-video R@5· 2022-11-22
    74.1
    best: 84.5 (HunYuan_tvr (huge))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Video RetrievalonMSR-VTT-1kA
    text-to-video R@1· 2022-11-22
    47.6
    best: 62.9 (HunYuan_tvr (huge))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Video RetrievalonMSR-VTT-1kA
    text-to-video R@10· 2022-11-22
    84.2
    best: 90.8 (HunYuan_tvr (huge))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Video RetrievalonMSR-VTT-1kA
    text-to-video R@5· 2022-11-22
    74.1
    best: 84.5 (HunYuan_tvr (huge))
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Visual GroundingonRefCOCO+ test B
    Accuracy (%)· 2022-11-22
    78.4
    best: 92 (Florence-2-large-ft)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Visual GroundingonRefCOCO+ val
    Accuracy (%)· 2022-11-22
    85.2
    best: 93.4 (Florence-2-large-ft)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Visual GroundingonRefCOCO+ testA
    Accuracy (%)· 2022-11-22
    90.3
    best: 95.3 (Florence-2-large-ft)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402

Reasoning2 results

  • Visual ReasoningonNLVR2 Dev
    Accuracy· 2022-11-22
    86.2
    best: 91.51 (BEiT-3)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402
  • Visual ReasoningonNLVR2 Test
    Accuracy· 2022-11-22
    87
    best: 92.58 (BEiT-3)
    X$^2$-VLM: All-In-One Pre-trained Model For Vision-Language TasksarXiv:2211.12402