Efficiently finding an occluded object with lateral access arises in many contexts such as warehouses, retail, healthcare, shipping, and homes. We introduce LAX-RAY (Lateral Access maXimal Reduction of occupancY support Area), a system to automate the mechanical search for occluded objects on shelves. For such lateral access environments, LAX-RAY couples a perception pipeline predicting a target object occupancy support distribution with a mechanical search policy that sequentially selects occluding objects to push to the side to reveal the target as efficiently as possible. Within the context of extruded polygonal objects and a stationary target with a known aspect ratio, we explore three lateral access search policies: Distribution Area Reduction (DAR), Distribution Entropy Reduction (DER), and Distribution Entropy Reduction over Multiple Time Steps (DER-MT) utilizing the support distribution and prior information. We evaluate these policies using the First-Order Shelf Simulator (FOSS) in which we simulate 800 random shelf environments of varying difficulty, and in a physical shelf environment with a Fetch robot and an embedded PrimeSense RGBD Camera. Average simulation results of 87.3% success rate demonstrate better performance of DER-MT with 2 prediction steps. When deployed on the robot, results show a success rate of at least 80% for all policies, suggesting that LAX-RAY can efficiently reveal the target object in reality. Both results show significantly better performance of the three proposed policies compared to a baseline policy with uniform probability distribution assumption in non-trivial cases, showing the importance of distribution prediction. Code, videos, and supplementary material can be found at https://sites.google.com/berkeley.edu/lax-ray.
翻译:在仓库、零售、医疗保健、航运和家居等许多情况下,都出现了一个带有横向准入的隐蔽物体。我们引入了LAX-RAY(Latera Access maXimal Reformation of occepancY Areat),一个自动机械搜索书架上隐蔽物体的系统。对于这种横向准入环境,LAX-RAY夫妇有一个感知管道,预测目标物体占用支持分布,并采用机械搜索政策,按顺序选择隐蔽物体,推向一侧,以尽可能高效的方式显示目标。在挤压多边形多边形物体和定序分布中,我们探索三种横向访问搜索政策:分布区域减少(DAR)、分布恩特罗比(DER-MT),以及利用支持分布和先前信息在多时间步骤中分布的分布变缩缩缩缩缩图。我们用“第一曲线”模拟800个随机储存环境(FOSSOSS)来评估这些政策,在物理架状环境中,用更精确的不精确的机器人和较精确的预估测基SDER-DR3号假设环境中,用最精确的缩缩略图显示八十进的成绩。在显示八十进的成绩中显示八十进的成绩中显示80的成绩。