2021
DOI: 10.3390/e23101259
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Using Non-Additive Entropy to Enhance Convolutional Neural Features for Texture Recognition

Abstract: Here we present a study on the use of non-additive entropy to improve the performance of convolutional neural networks for texture description. More precisely, we introduce the use of a local transform that associates each pixel with a measure of local entropy and use such alternative representation as the input to a pretrained convolutional network that performs feature extraction. We compare the performance of our approach in texture recognition over well-established benchmark databases and on a practical ta… Show more

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