Publication | Closed Access
Fast Image Processing with Fully-Convolutional Networks
330
Citations
72
References
2017
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningStyle TransferFully-convolutional NetworkDeblurringImage AnalysisComputational ImagingVision RecognitionSynthetic Image GenerationMachine VisionFast ImageComputer ScienceHuman Image SynthesisDeep LearningOptical Image RecognitionComputer VisionBiomedical ImagingImage Processing OperatorsVideo HallucinationNetwork Architecture
We present an approach to accelerating a wide variety of image processing operators. Our approach uses a fully-convolutional network that is trained on input-output pairs that demonstrate the operator's action. After training, the original operator need not be run at all. The trained network operates at full resolution and runs in constant time. We investigate the effect of network architecture on approximation accuracy, runtime, and memory footprint, and identify a specific architecture that balances these considerations. We evaluate the presented approach on ten advanced image processing operators, including multiple variational models, multiscale tone and detail manipulation, photographic style transfer, nonlocal dehazing, and nonphoto-realistic stylization. All operators are approximated by the same model. Experiments demonstrate that the presented approach is significantly more accurate than prior approximation schemes. It increases approximation accuracy as measured by PSNR across the evaluated operators by 8.5 dB on the MIT-Adobe dataset (from 27.5 to 36 dB) and reduces DSSIM by a multiplicative factor of 3 compared to the most accurate prior approximation scheme, while being the fastest. We show that our models generalize across datasets and across resolutions, and investigate a number of extensions of the presented approach.
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