ROAINov 30, 2022

Visual-tactile Fusion for Transparent Object Grasping in Complex Backgrounds

arXiv:2211.16693v264 citationsh-index: 19
Originality Incremental advance
AI Analysis

This addresses the problem of robotic grasping of transparent objects in challenging environments, representing a domain-specific incremental improvement.

The paper tackles transparent object grasping in complex backgrounds by proposing a visual-tactile fusion framework that includes grasping position detection, tactile calibration, and classification. The approach improves grasping success rate by 36.7% and classification accuracy by 34% compared to baseline methods.

The accurate detection and grasping of transparent objects are challenging but of significance to robots. Here, a visual-tactile fusion framework for transparent object grasping under complex backgrounds and variant light conditions is proposed, including the grasping position detection, tactile calibration, and visual-tactile fusion based classification. First, a multi-scene synthetic grasping dataset generation method with a Gaussian distribution based data annotation is proposed. Besides, a novel grasping network named TGCNN is proposed for grasping position detection, showing good results in both synthetic and real scenes. In tactile calibration, inspired by human grasping, a fully convolutional network based tactile feature extraction method and a central location based adaptive grasping strategy are designed, improving the success rate by 36.7% compared to direct grasping. Furthermore, a visual-tactile fusion method is proposed for transparent objects classification, which improves the classification accuracy by 34%. The proposed framework synergizes the advantages of vision and touch, and greatly improves the grasping efficiency of transparent objects.

Foundations

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