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arxiv: 2305.07631 · v1 · pith:G5JBNI36 · submitted 2023-05-12 · cs.RO

Vision and Control for Grasping Clear Plastic Bags

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classification cs.RO
keywords methodvisioncontrolgraspbagscleardeep-learningeffective
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We develop two novel vision methods for planning effective grasps for clear plastic bags, as well as a control method to enable a Sawyer arm with a parallel gripper to execute the grasps. The first vision method is based on classical image processing and heuristics (e.g., Canny edge detection) to select a grasp target and angle. The second uses a deep-learning model trained on a human-labeled data set to mimic human grasp decisions. A clustering algorithm is used to de-noise the outputs of each vision method. Subsequently, a workspace PD control method is used to execute each grasp. Of the two vision methods, we find the deep-learning based method to be more effective.

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