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Learning Tactile Characterizations Of Object- And Pose-specific Grasps

机译:学习对象和姿势特异性掌握的触觉特征

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Our aim is to predict the stability of a grasp from the perceptions available to a robot before attempting to lift up and transport an object. The percepts we consider consist of the tactile imprints and the object-gripper configuration read before and until the robot's manipulator is fully closed around an object. Our robot is equipped with multiple tactile sensing arrays and it is able to track the pose of an object during the application of a grasp. We present a kernel-logistic-regression model of pose- and touch-conditional grasp success probability which we train on grasp data collected by letting the robot experience the effect on tactile and visual signals of grasps suggested by a teacher, and letting the robot verify which grasps can be used to rigidly control the object. We consider models defined on several subspaces of our input data - e.g., using tactile perceptions or pose information only. Our experiment demonstrates that joint tactile and pose-based perceptions carry valuable grasp-related information, as models trained on both hand poses and tactile parameters perform better than the models trained exclusively on one perceptual input.
机译:我们的宗旨是预测掌握从机器人可用的看法的稳定性,然后试图抬起并运输物体。我们认为的感知包括触觉印记和前一部分读取的对象夹具配置,直到机器人的机械手在对象周围完全关闭。我们的机器人配备了多种触觉传感阵列,并且能够在掌握期间跟踪物体的姿势。我们介绍了姿势和触摸条件掌握成功概率的内核逻辑回归模型,我们通过让机器人体验到教师建议的掌握和视觉信号的触觉和视觉信号的效果来训练我们的掌握数据。并让机器人验证哪个Graasps可用于刚性控制该对象。我们考虑在我们的输入数据的多个子空间上定义的模型 - 例如,使用触觉感知或姿势信息。我们的实验表明,联合触觉和基于姿势的感知携带有价值的掌握相关信息,因为在手动姿势和触觉参数上培训的模型比仅在一个感知输入上训练的模型更好地表现更好。

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