Machining quality monitoring (MQM) in laser-assisted micro-milling of glass using cutting force signals: an image-based deep transfer learning
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Sung-Hoon Ahn | Byeng D. Youn | Yunhan Kim | Taekyum Kim | B. Youn | Sung-hoon Ahn | Taekyum Kim | Yunhan Kim
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