Cretu Ana-Maria, Payeur Pierre, Petriu Emil M
School of Electrical Engineering and Computer Science, University of Ottawa, Ottawa, ON, Canada.
IEEE Trans Syst Man Cybern B Cybern. 2012 Jun;42(3):740-53. doi: 10.1109/TSMCB.2011.2176115. Epub 2011 Dec 27.
This paper discusses the design and implementation of a framework that automatically extracts and monitors the shape deformations of soft objects from a video sequence and maps them with force measurements with the goal of providing the necessary information to the controller of a robotic hand to ensure safe model-based deformable object manipulation. Measurements corresponding to the interaction force at the level of the fingertips and to the position of the fingertips of a three-finger robotic hand are associated with the contours of a deformed object tracked in a series of images using neural-network approaches. The resulting model captures the behavior of the object and is able to predict its behavior for previously unseen interactions without any assumption on the object's material. The availability of such models can contribute to the improvement of a robotic hand controller, therefore allowing more accurate and stable grasp while providing more elaborate manipulation capabilities for deformable objects. Experiments performed for different objects, made of various materials, reveal that the method accurately captures and predicts the object's shape deformation while the object is submitted to external forces applied by the robot fingers. The proposed method is also fast and insensitive to severe contour deformations, as well as to smooth changes in lighting, contrast, and background.
本文讨论了一个框架的设计与实现,该框架能从视频序列中自动提取并监测软物体的形状变形,并将其与力测量结果进行映射,目的是为机器人手的控制器提供必要信息,以确保基于模型的安全可变形物体操作。使用神经网络方法,将与三指机器人手的指尖处相互作用力以及指尖位置相对应的测量结果,与在一系列图像中跟踪的变形物体轮廓相关联。所得模型捕捉了物体的行为,并且能够在不对物体材料做任何假设的情况下,预测其在先前未见的相互作用中的行为。此类模型的可用性有助于改进机器人手控制器,从而在为可变形物体提供更精细操作能力的同时,实现更精确、稳定的抓握。针对由各种材料制成的不同物体进行的实验表明,该方法能在物体受到机器人手指施加的外力时,准确捕捉并预测物体的形状变形。所提方法还具有速度快、对严重的轮廓变形以及光照、对比度和背景的平滑变化不敏感的特点。