HHMR: Holistic Hand Mesh Recovery by Enhancing the Multimodal Controllability of Graph Diffusion Models
Mengcheng Li, Hongwen Zhang, Yuxiang Zhang, Ruizhi Shao, Tao Yu, Yebin, Liu

TL;DR
This paper introduces HHMR, a unified diffusion-based framework that enables multiple hand mesh recovery tasks through multimodal controllability, improving accuracy and versatility in hand modeling applications.
Contribution
The paper presents a novel all-in-one diffusion model with cross-modal control and gradient guidance for comprehensive hand mesh recovery tasks.
Findings
Outperforms existing methods in various hand mesh recovery tasks.
Achieves strong multimodal control and decoupling of signals.
Enhances accuracy with Condition-aligned Gradient Guidance.
Abstract
Recent years have witnessed a trend of the deep integration of the generation and reconstruction paradigms. In this paper, we extend the ability of controllable generative models for a more comprehensive hand mesh recovery task: direct hand mesh generation, inpainting, reconstruction, and fitting in a single framework, which we name as Holistic Hand Mesh Recovery (HHMR). Our key observation is that different kinds of hand mesh recovery tasks can be achieved by a single generative model with strong multimodal controllability, and in such a framework, realizing different tasks only requires giving different signals as conditions. To achieve this goal, we propose an all-in-one diffusion framework based on graph convolution and attention mechanisms for holistic hand mesh recovery. In order to achieve strong control generation capability while ensuring the decoupling of multimodal control…
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Taxonomy
TopicsHuman Pose and Action Recognition · Hand Gesture Recognition Systems · Face recognition and analysis
MethodsConvolution · Diffusion
