Transcription of Deep Multi-Scale Convolutional Neural Network for …
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Deep Multi-Scale Convolutional Neural Network for Dynamic Scene DeblurringSeungjun NahTae Hyun KimKyoung Mu LeeDepartment of ECE, ASRI, Seoul National University, 151-742, Seoul, Korea{ , blind deblurring for general dynamicscenes is a challenging computer vision problem as blursarise not only from multiple object motions but also fromcamera shake, scene depth variation. To remove thesecomplicated motion blurs, conventional energy optimiza-tion based methods rely on simple assumptions such thatblur kernel is partially uniform or locally linear. More-over, recent machine learning based methods also dependon synthetic blur datasets generated under these assump-tions.}
network based on the separable kernel property that the (in-verse) blur kernel can be decomposed into a small number of significant filters. Additionally, they incorporated the de-noising network [7] to reduce visual artifacts such as noise and color saturation by concatenating the module at the end of their proposed network.
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