%ABoroushaki, Tara%APerper, Isaac%ANachin, Mergen%ARodriguez, Alberto%AAdib, Fadel%D2021%I %K %MOSTI ID: 10319380 %PMedium: X %TRFusion: Robotic Grasping via RF-Visual Sensing and Learning %XWe present the design, implementation, and evaluation of RFusion, a robotic system that can search for and retrieve RFID-tagged items in line-of-sight, non-line-of-sight, and fully-occluded settings. RFusion consists of a robotic arm that has a camera and antenna strapped around its gripper. Our design introduces two key innovations: the first is a method that geometrically fuses RF and visual information to reduce uncertainty about the target object's location, even when the item is fully occluded. The second is a novel reinforcement-learning network that uses the fused RF-visual information to efficiently localize, maneuver toward, and grasp target items. We built an end-to-end prototype of RFusion and tested it in challenging real-world environments. Our evaluation demonstrates that RFusion localizes target items with centimeter-scale accuracy and achieves 96% success rate in retrieving fully occluded objects, even if they are under a pile. The system paves the way for novel robotic retrieval tasks in complex environments such as warehouses, manufacturing plants, and smart homes. Country unknown/Code not availablehttps://doi.org/10.1145/3485730.3485944OSTI-MSA