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NTIS 바로가기소성가공 = Transactions of materials processing : Journal of the Korean society for technology of plastics, v.31 no.4, 2022년, pp.229 - 239
김수빈 (인하대학교 신소재공학과) , 이기안 (인하대학교 신소재공학과)
Convolution Neural Network(CNN) is a class of deep learning algorithms and can be used for image analysis. In particular, it has excellent performance in finding the pattern of images. Therefore, CNN is commonly applied for recognizing, learning and classifying images. In this study, the surface def...
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