DIPO: Dual-State Images Controlled Articulated Object Generation Powered by Diverse Data
–Neural Information Processing Systems
Compared to the single-image approach, our dual-image input imposes only a modest overhead for data collection, but at the same time provides important motion information, which is a reliable guide for predicting kinematic relationships between parts. Specifically, we propose a dual-image diffusion model that captures relationships between the image pair to generate part layouts and joint parameters.
Neural Information Processing Systems
Jun-13-2026, 12:18:38 GMT
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