Blandón Luengas, 2020 - Google Patents
Image processing system based on similarity/dissimilarity measures to classify binary images from contour-based featuresBlandón Luengas, 2020
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- 325232721173852142
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- Blandón Luengas J
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Resumen en español Image Processing Systems (IPS) try to solve tasks like image classification or segmentation based on its content. Many authors proposed a variety of techniques to tackle the image classification task. Plenty of methods address the …
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