Publikace: One Step Deep Learning Approach to Grasp Detection in Robotics
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Doležel, Petr
Štursa, Dominik
Honc, Daniel
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Springer Science and Business Media
Abstrakt
Grasp point detection is a necessary ability to handle for industrial robots. In recent years, various deep learning-based techniques for robotic grasping have been introduced. To follow this trend, we introduce a convolutional neural network-based approach for model-free one step method for grasp point detection. This method provides all feasible grasp points suitable for parallel grippers, based on a single RGB image of the scene. A case study, which shows the outstanding accuracy of the presented approach as well as its acceptable response time, is presented at the end of this contribution.
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Klíčová slova
computer vision, deep learning, grasp point, U-Net, počítačové vidění, hluboké učení, uchopovací bod, U-Net