DailyArt: Discovering Articulation from Single Static Images via Latent Dynamics
arXiv cs.CV / 4/10/2026
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Key Points
- The paper introduces DailyArt, a method for estimating the kinematics of articulated objects from a single static, closed-state image despite severe motion-cue occlusion.
- DailyArt reframes articulated joint estimation as synthesis-mediated reasoning by first generating a maximally opened state under the same camera view and then inferring joint parameters from the discrepancy with the observed image.
- It uses a set-prediction approach to recover all joints simultaneously, avoiding object-specific templates, multi-view inputs, or explicit part annotations at test time.
- The framework also enables downstream part-level novel state synthesis by conditioning the generation on the estimated joints.
- Experiments reported in the work indicate strong performance for both articulated joint estimation and joint-conditioned novel state synthesis.
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