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Feeding Convolutional Neural Network by hand-crafted features based on Enhanced Neighbor-Center Different Image for color texture classification

机译:通过基于增强型邻居的不同图像进行彩色纹理分类,通过手工制作的特征喂养卷积神经网络

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Texture analysis has many important applications, including material recognition, face recognition, object detection, image segmentation. Local feature descriptors were the principle approach for texture analysis in the past. Recently, Convolutional Neural Network (CNN) has provided more promising results for texture recognition and other related computer vision tasks. Standard CNN takes labeled RGB images as input. However, other encoded images were used as extra input to CNN, which have been shown to improve the performance. We propose to feed CNN with the new encoded image. The experimental results on four benchmark color texture database show the efficiency of our proposed approach. The source code of our algorithm and all simulations used for this paper are publicly available at: https://sites.google.com/view/vinhsiam/codes
机译:纹理分析有许多重要的应用程序,包括材料识别,面部识别,对象检测,图像分割。本地特征描述符是过去纹理分析的原理方法。最近,卷积神经网络(CNN)为纹理识别和其他相关计算机视觉任务提供了更有前途的结果。标准CNN将标记为RGB图像作为输入。然而,其他编码图像被用作CNN的额外输入,这已被示出为提高性能。我们建议使用新的编码图像提供CNN。四个基准彩色纹理数据库的实验结果表明了我们提出的方法的效率。我们算法的源代码和本文用于本文的所有模拟可在:https://sites.google.com/view/vinhsiam/codes

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