Publication | Closed Access
Deep Network Interpolation for Continuous Imagery Effect Transition
113
Citations
38
References
2019
Year
Unknown Venue
Convolutional Neural NetworkMachine VisionImage AnalysisMachine LearningNetwork InterpolationInterpolation CoefficientsEngineeringDeep Network InterpolationVideo HallucinationStyle TransferHuman Image SynthesisDeep LearningVideo RestorationComputer VisionSynthetic Image Generation
Deep convolutional neural network has demonstrated its capability of learning a deterministic mapping for the desired imagery effect. However, the large variety of user flavors motivates the possibility of continuous transition among different output effects. Unlike existing methods that require a specific design to achieve one particular transition (e.g., style transfer), we propose a simple yet universal approach to attain a smooth control of diverse imagery effects in many low-level vision tasks, including image restoration, image-to-image translation, and style transfer. Specifically, our method, namely Deep Network Interpolation (DNI), applies linear interpolation in the parameter space of two or more correlated networks. A smooth control of imagery effects can be achieved by tweaking the interpolation coefficients. In addition to DNI and its broad applications, we also investigate the mechanism of network interpolation from the perspective of learned filters.
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