1. Robot suction region prediction method from knowledge to learning in disordered manufacturing scenarios.
- Author
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Zhang, Tongjia, Zhang, Chengrui, Ji, Shuai, and Hu, Tianliang
- Subjects
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CONVOLUTIONAL neural networks , *DEEP learning , *FORECASTING , *PREDICTION models - Abstract
Suction plays an important role in the disordered manufacturing scenarios because of its single-point contact and reliability. The prediction of suction region is the primary problem needs to be solved in these applications. However, the traditional non-deep learning methods is insufficient for its poor generalization performance, and the deep learning method is inconvenient as it requires manually labeled datasets for training. Therefore, a suction region prediction method from knowledge to learning is proposed to overcome these challenges, which adopts a suction reliability matrix based on the depth image to label the disordered manufacturing datasets without manual labeling, where the effects of suction cup model, part centroid and depth are all considered. The disordered manufacturing dataset annotated is used to train the suction region prediction model based on fully convolutional neural network, which can be customized according to the model of suction cup and parts. Experiments and analysis show that the proposed method has the advantages of short detection time, high robustness and strong generalization ability. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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