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CoInGP: Convolutional Inpainting with Genetic Programming

2020-04-23 16:31:58
Domagoj Jakobovic, Luca Manzoni, Luca Mariot, Stjepan Picek

Abstract

We investigate the use of Genetic Programming (GP) as a convolutional predictor for supervised learning tasks in signal processing, focusing on the use case of predicting missing pixels in images. The training is performed by sweeping a small sliding window on the available pixels: all pixels in the window except for the central one are fed in input to a GP tree whose output is taken as the predicted value for the central pixel. The best GP tree in the population scoring the lowest prediction error over all available pixels in the population is then tested on the actual missing pixels of the degraded image. We experimentally assess this approach by training over four target images, removing up to 20\% of the pixels for the testing phase. The results indicate that our method can learn to some extent the distribution of missing pixels in an image and that GP with Moore neighborhood works better than the Von Neumann neighborhood, although the latter allows for a larger training set size.

Abstract (translated)

URL

https://arxiv.org/abs/2004.11300

PDF

https://arxiv.org/pdf/2004.11300.pdf


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