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📄 Abstract
Abstract: Achieving dexterous robotic grasping with multi-fingered hands remains a
significant challenge. While existing methods rely on complete 3D scans to
predict grasp poses, these approaches face limitations due to the difficulty of
acquiring high-quality 3D data in real-world scenarios. In this paper, we
introduce GRASPLAT, a novel grasping framework that leverages consistent 3D
information while being trained solely on RGB images. Our key insight is that
by synthesizing physically plausible images of a hand grasping an object, we
can regress the corresponding hand joints for a successful grasp. To achieve
this, we utilize 3D Gaussian Splatting to generate high-fidelity novel views of
real hand-object interactions, enabling end-to-end training with RGB data.
Unlike prior methods, our approach incorporates a photometric loss that refines
grasp predictions by minimizing discrepancies between rendered and real images.
We conduct extensive experiments on both synthetic and real-world grasping
datasets, demonstrating that GRASPLAT improves grasp success rates up to 36.9%
over existing image-based methods. Project page:
https://mbortolon97.github.io/grasplat/
Authors (6)
Matteo Bortolon
Nuno Ferreira Duarte
Plinio Moreno
Fabio Poiesi
José Santos-Victor
Alessio Del Bue
Submitted
October 22, 2025
Key Contributions
GRASPLAT is a novel grasping framework that enables dexterous grasping using only RGB images by leveraging 3D Gaussian Splatting for novel view synthesis. This allows end-to-end training with RGB data, overcoming the limitations of methods requiring complete 3D scans, and incorporates a photometric loss to refine grasp predictions, making it more practical for real-world scenarios.
Business Value
Enables more versatile and adaptable robotic grasping systems, reducing the need for expensive 3D sensing and complex object models, thus lowering costs for automation in manufacturing and logistics.