InstructX: Towards Unified Visual Editing with MLLM Guidance
Chong Mou(Peking University), Qian He, Fulong Ye(Intelligent Health (United Kingdom)), Xinghui Li(Tsinghua–Berkeley Shenzhen Institute), Pengze Zhang, Songtao Zhao(Beijing Dance Academy), Yanze Wu(Tencent (China))
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