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A Visual Classification Method for Milling Surface Roughness Based on Convolutional Neural Network

Published: 29 October 2021 Publication History
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            cover image ACM Other conferences
            ICIIP '21: Proceedings of the 6th International Conference on Intelligent Information Processing
            July 2021
            347 pages
            ISBN:9781450390637
            DOI:10.1145/3480571
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            New York, NY, United States

            Publication History

            Published: 29 October 2021

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            Author Tags

            1. Convolutional Neural Network
            2. End to End
            3. Non-contact Measurement
            4. Roughness Classification

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            Funding Sources

            • the National Natural Science Foundation of China
            • the Guangxi Graduate Student Innovation Project in 2021
            • the Scientific Research Start-up Fund of Guilin University of Technology

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            ICIIP 2021

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            Overall Acceptance Rate 87 of 367 submissions, 24%

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