Morphological Operations and Artificial Neural Networks for Multi-scale colored texture classification

Belal Khaldi, Yacine Khaldi, Hanane Azzaoui, Oussama Aiadi, M. L. Kherfi
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Abstract

Among image descriptors, texture is one of the most used features to represent the visual content of images. According to several studies, texture could be seen differently based on the selected scale of interest (SoI), which raises a serious problem of finding the appropriate SoI. To tackle this issue, a new scheme based on mathematical morphology and artificial neural networks (ANN) has been introduced. Firstly, the image is subjected to a series of morphological operations to extract the different SoIs. From each SoI, a set of color features are extracted and fed to two successive ANNs in order to categorize the textures. The present scheme maintains the extraction of both color and multi-scale texture information. A comprehensive experimental comparison has been conducted where the present scheme has outperformed other widely known texture and CNN-based descriptors.
多尺度彩色纹理分类的形态学操作与人工神经网络
在图像描述符中,纹理是最常用的表征图像视觉内容的特征之一。根据一些研究,根据所选择的兴趣尺度(SoI),可以看到不同的纹理,这就提出了一个寻找合适的SoI的严重问题。为了解决这一问题,提出了一种基于数学形态学和人工神经网络(ANN)的新方案。首先,对图像进行一系列形态学运算,提取不同的SoIs;从每个SoI中提取一组颜色特征,并将其馈送到两个连续的ann中,以便对纹理进行分类。该方案同时保留了颜色和多尺度纹理信息的提取。经过全面的实验比较,本方案优于其他广为人知的基于纹理和cnn的描述符。
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