FINGERPRINT IMAGE DENOISING AND INPAINTING USING CONVOLUTIONAL NEURAL NETWORK |
BAE, JUNGYOON
(DEPARTMENT OF COMPUTATIONAL SCIENCE AND TECHNOLOGY, SEOUL NATIONAL UNIVERSITY)
CHOI, HAN-SOO (DEPARTMENT OF MATHEMATICAL SCIENCES / RESEARCH INSTITUTE OF MATHEMATICS, SEOUL NATIONAL UNIVERSITY) KIM, SUJIN (DEPARTMENT OF COMPUTATIONAL SCIENCE AND TECHNOLOGY, SEOUL NATIONAL UNIVERSITY) KANG, MYUNGJOO (DEPARTMENT OF MATHEMATICAL SCIENCES, SEOUL NATIONAL UNIVERSITY) |
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