ROCVNov 4, 2023

Anthropomorphic Grasping with Neural Object Shape Completion

arXiv:2311.02510v213 citationsh-index: 18
Originality Incremental advance
AI Analysis

This work addresses the challenge of precise grasping and manipulation for robots in human-suited environments, representing an incremental advance in leveraging human-like object understanding.

The paper tackled the problem of robotic grasping by reconstructing and completing full object geometry from partial observations, resulting in a nearly 30% improvement in grasping success rates over baselines and over 150 successful grasps across three object categories.

The progressive prevalence of robots in human-suited environments has given rise to a myriad of object manipulation techniques, in which dexterity plays a paramount role. It is well-established that humans exhibit extraordinary dexterity when handling objects. Such dexterity seems to derive from a robust understanding of object properties (such as weight, size, and shape), as well as a remarkable capacity to interact with them. Hand postures commonly demonstrate the influence of specific regions on objects that need to be grasped, especially when objects are partially visible. In this work, we leverage human-like object understanding by reconstructing and completing their full geometry from partial observations, and manipulating them using a 7-DoF anthropomorphic robot hand. Our approach has significantly improved the grasping success rates of baselines with only partial reconstruction by nearly 30% and achieved over 150 successful grasps with three different object categories. This demonstrates our approach's consistent ability to predict and execute grasping postures based on the completed object shapes from various directions and positions in real-world scenarios. Our work opens up new possibilities for enhancing robotic applications that require precise grasping and manipulation skills of real-world reconstructed objects.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes