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Visual ChatGPT: Talking, Drawing and Editing with Visual Foundation Models

About

ChatGPT is attracting a cross-field interest as it provides a language interface with remarkable conversational competency and reasoning capabilities across many domains. However, since ChatGPT is trained with languages, it is currently not capable of processing or generating images from the visual world. At the same time, Visual Foundation Models, such as Visual Transformers or Stable Diffusion, although showing great visual understanding and generation capabilities, they are only experts on specific tasks with one-round fixed inputs and outputs. To this end, We build a system called \textbf{Visual ChatGPT}, incorporating different Visual Foundation Models, to enable the user to interact with ChatGPT by 1) sending and receiving not only languages but also images 2) providing complex visual questions or visual editing instructions that require the collaboration of multiple AI models with multi-steps. 3) providing feedback and asking for corrected results. We design a series of prompts to inject the visual model information into ChatGPT, considering models of multiple inputs/outputs and models that require visual feedback. Experiments show that Visual ChatGPT opens the door to investigating the visual roles of ChatGPT with the help of Visual Foundation Models. Our system is publicly available at \url{https://github.com/microsoft/visual-chatgpt}.

Chenfei Wu, Shengming Yin, Weizhen Qi, Xiaodong Wang, Zecheng Tang, Nan Duan• 2023

Related benchmarks

TaskDatasetResultRank
3D Human Pose Estimation3DPW (test)
PA-MPJPE63.1
505
Visual Question AnsweringGQA (test-dev)
Accuracy43.2
178
Multimodal ReasoningM3CoT (test)
Total Acc25.92
31
Reasoning-based 3D Human Pose EstimationRPE benchmark
MPJPE168.4
29
Visual ReasoningNLVR2 v2 (dev)
Accuracy51.6
20
Visual Question AnsweringV*Bench
Accuracy41.36
17
Multimodal Instruction FollowingViSiT-Bench Sept. 27th, 2023 (Leaderboard)
ELO941
15
Tool Use AccuracyUnseen Tools
SRt0.998
7
Tool Use AccuracySeen Tools
SRt89.2
7
Tool usage in multi-turn dialogueChatHuman Multi-turn Dialogue Benchmark 1.0 (test)
Success Rate (Args)86
4
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