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Visual Tracking of Deformation and Classification of Non-Rigid Objects with Robot Hand Probing

机译:机器人手探测可视化跟踪非刚性物体的变形和分类

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Performing tasks with a robot hand often requires a complete knowledge of the manipulated object, including its properties (shape, rigidity, surface texture) and its location in the environment, in order to ensure safe and efficient manipulation. While well-established procedures exist for the manipulation of rigid objects, as well as several approaches for the manipulation of linear or planar deformable objects such as ropes or fabric, research addressing the characterization of deformable objects occupying a volume remains relatively limited. The paper proposes an approach for tracking the deformation of non-rigid objects under robot hand manipulation using RGB-D data. The purpose is to automatically classify deformable objects as rigid, elastic, plastic, or elasto-plastic, based on the material they are made of, and to support recognition of the category of such objects through a robotic probing process in order to enhance manipulation capabilities. The proposed approach combines advantageously classical color and depth image processing techniques and proposes a novel combination of the fast level set method with a log-polar mapping of the visual data to robustly detect and track the contour of a deformable object in a RGB-D data stream. Dynamic time warping is employed to characterize the object properties independently from the varying length of the tracked contour as the object deforms. The proposed solution achieves a classification rate over all categories of material of up to 98.3%. When integrated in the control loop of a robot hand, it can contribute to ensure stable grasp, and safe manipulation capability that will preserve the physical integrity of the object.
机译:用机械手执行任务通常需要全面了解被操纵的对象,包括其属性(形状,刚度,表面纹理)及其在环境中的位置,以确保安全有效地进行操纵。尽管存在用于操纵刚性物体的成熟方法以及用于操纵诸如绳索或织物的线性或平面形可变形物体的几种方法,但是针对占据一定体积的可变形物体的表征的研究仍然相对有限。本文提出了一种使用RGB-D数据跟踪机器人手操作下非刚性物体变形的方法。目的是根据可变形对象的材质将其自动分类为刚性,弹性,塑料或弹塑性,并通过机器人探测过程支持识别此类对象,以增强操纵能力。所提出的方法有利地结合了经典的彩色和深度图像处理技术,并提出了快速水平集方法与视觉数据的对数极坐标映射的新颖组合,从而能够可靠地检测和跟踪RGB-D数据中可变形物体的轮廓流。动态时间扭曲可用于随对象变形而独立于跟踪轮廓的变化长度来表征对象属性。所提出的解决方案对所有类别的材料实现了高达98.3%的分类率。当集成到机械手的控制环中时,它可以有助于确保稳定的抓地力和安全的操作能力,从而保持对象的物理完整性。

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