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3D hand-object interaction data is scarce due to the hardware constraints in scaling up the data collection process. In this paper, we propose HOIDiffusion for generating realistic and diverse 3D hand-object interaction data. Our model is a conditional diffusion model that takes both the 3D hand-object geometric structure and text description as inputs for image synthesis. This offers a more controllable and realistic synthesis as we can specify the structure and style inputs in a disentangled manner. HOIDiffusion is trained by leveraging a diffusion model pre-trained on large-scale natural images and a few 3D human demonstrations. Beyond controllable image synthesis, we adopt the generated 3D data for learning 6D object pose estimation and show its effectiveness in improving perception systems. Project page: https://mq-zhang1.github.io/HOIDiffusion
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Mengqi Zhang
Hainan University
Yang Fu
Chongqing University
Zheng Ding
Yunnan University
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Zhang et al. (Mon,) studied this question.
synapsesocial.com/papers/68e73a7cb6db6435876b3af6 — DOI: https://doi.org/10.48550/arxiv.2403.12011