Summary
The paper "MoRight: Motion Control Done Right" introduces a novel approach for generating motion-controlled videos, addressing key limitations in existing methods. It focuses on achieving disentangled motion control, allowing separate manipulation of object motion and camera viewpoint, alongside ensuring motion causality where user actions trigger physically plausible and coherent reactions from other scene elements. This advancement aims to overcome current challenges where camera and object movements are entangled, and actions lack realistic causal effects.
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