FuseGrasp: Radar-Camera Fusion for Robotic Grasping of Transparent Objects
Hongyu Deng, Tianfan Xue, He Chen

TL;DR
FuseGrasp introduces a radar-camera fusion system that significantly improves robotic grasping of transparent objects by enhancing depth perception and material identification, especially in challenging conditions.
Contribution
This work is the first to combine radar and camera data for transparent object manipulation, employing a novel two-stage training approach and material identification capabilities.
Findings
Enhanced depth reconstruction accuracy for transparent objects.
Improved material identification of glass and plastic.
Significant success rate increase in robotic grasping tasks.
Abstract
Transparent objects are prevalent in everyday environments, but their distinct physical properties pose significant challenges for camera-guided robotic arms. Current research is mainly dependent on camera-only approaches, which often falter in suboptimal conditions, such as low-light environments. In response to this challenge, we present FuseGrasp, the first radar-camera fusion system tailored to enhance the transparent objects manipulation. FuseGrasp exploits the weak penetrating property of millimeter-wave (mmWave) signals, which causes transparent materials to appear opaque, and combines it with the precise motion control of a robotic arm to acquire high-quality mmWave radar images of transparent objects. The system employs a carefully designed deep neural network to fuse radar and camera imagery, thereby improving depth completion and elevating the success rate of object grasping.…
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