Journal of South China University of Technology (Natural Science Edition) ›› 2019, Vol. 47 ›› Issue (12): 1-8.doi: 10.12141/j.issn.1000-565X.180161
• Mechanical Engineering • Next Articles
YAO Xifan LAN Hongyu TAO Tao LEI Yi
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Abstract: Traditional industrial automatic sorting method is confronted with the problems such as low accuracy of workpiece identification and complex definition of features. Although deep-learning provides a good solution to such problems,there remains the problem of high computational requirements for edge-end equipment. Thus a deep- learning recognition algorithm based on fog and cloud computing was proposed,in which an improved ALEXNET convolution neural network ( CNN) is used for training in the cloud. Then,the trained CNN is downloaded to the fog ( edge) device to recognize workpieces in real time. The results of the experiment carried on 100 different workpieces show that accuracy of the proposed workpiece recognition algorithm is improved from 98% of ALEXNET to 99% ,and the model parameters are reduced by 25% . The workpiece recognition algorithm can fully utilize the powerful cloud computing capabilities and the real-time nature of edge devices,and provide a novel way for intelli- gent recognition of workpieces.
Key words: deep-learning, workpiece recognition, cloud computing, fog computing
CLC Number:
TP391:TH164
YAO Xifan, LAN Hongyu, TAO Tao, et al. Deep-Learning Recognition of Workpieces Based on Cloud and Fog Computing[J]. Journal of South China University of Technology (Natural Science Edition), 2019, 47(12): 1-8.
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URL: https://zrb.bjb.scut.edu.cn/EN/10.12141/j.issn.1000-565X.180161
https://zrb.bjb.scut.edu.cn/EN/Y2019/V47/I12/1