FuseBot: RF-Visual Mechanical Search

Tara Boroushaki, L. Dodds, Nazish Naeem, Fadel M. Adib
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引用次数: 5

Abstract

—Mechanical search is a robotic problem where a robot needs to retrieve a target item that is partially or fully-occluded from its camera. State-of-the-art approaches for me- chanical search either require an expensive search process to find the target item, or they require the item to be tagged with a radio frequency identification tag (e.g., RFID), making their approach beneficial only to tagged items in the environment. We present FuseBot, the first robotic system for RF-Visual mechanical search that enables efficient retrieval of both RF-tagged and untagged items in a pile. Rather than requiring all target items in a pile to be RF-tagged, FuseBot leverages the mere existence of an RF-tagged item in the pile to benefit both tagged and untagged items. Our design introduces two key innovations. The first is RF-Visual Mapping , a technique that identifies and locates RF-tagged items in a pile and uses this information to construct an RF-Visual occupancy distribution map. The second is RF-Visual Extraction , a policy formulated as an optimization problem that minimizes the number of actions required to extract the target object by accounting for the probabilistic occupancy distribution, the expected grasp quality, and the expected information gain from future actions. We built a real-time end-to-end prototype of our system on a UR5e robotic arm with in-hand vision and RF perception modules. We conducted over 180 real-world experimental trials to evaluate FuseBot and compare its performance to a state-of-the-art vision-based system named X-Ray [10]. Our experimental results demonstrate that FuseBot outperforms X-Ray’s efficiency by more than 40% in terms of the number of actions required for successful mechanical search. Furthermore, in comparison to X-Ray’s success rate of 84%, FuseBot achieves a success rate of 95% in retrieving untagged items, demonstrating for the first time that the benefits of RF perception extend beyond tagged objects in the mechanical search problem.
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FuseBot: rf视觉机械搜索
-机械搜索是一个机器人问题,机器人需要从相机中检索部分或完全被遮挡的目标物品。对于机械搜索来说,最先进的方法要么需要一个昂贵的搜索过程来找到目标物品,要么需要用射频识别标签(例如RFID)标记物品,这使得它们的方法只对环境中标记的物品有益。我们介绍了FuseBot,这是第一个用于射频视觉机械搜索的机器人系统,可以有效地检索一堆带有射频标签和未标记的物品。FuseBot并没有要求堆中的所有目标物品都贴上射频标签,而是充分利用堆中存在的射频标签物品,从而使标签和未标签的物品都受益。我们的设计引入了两个关键的创新。第一种是射频视觉映射,这种技术可以识别和定位一堆带有射频标签的物品,并利用这些信息构建一个射频视觉占用分布图。第二个是rf视觉提取,这是一个优化问题,通过考虑概率占用分布、预期抓取质量和未来操作的预期信息增益,最小化提取目标物体所需的操作数量。我们在UR5e机械臂上建立了一个实时端到端原型系统,该系统具有手持视觉和射频感知模块。我们进行了超过180次真实世界的实验试验来评估FuseBot,并将其性能与最先进的基于视觉的系统x射线进行比较[10]。我们的实验结果表明,就成功的机械搜索所需的动作数量而言,FuseBot的效率超过了X-Ray的40%以上。此外,与x射线的84%成功率相比,FuseBot在检索未标记物品方面的成功率为95%,这首次证明了射频感知的好处超出了机械搜索问题中标记物体的范围。
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