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Improving CNN-Based Texture Classification by Color Balancing

机译:通过色彩平衡改善基于CNN的纹理分类

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Texture classification has a long history in computer vision. In the last decade, the strong affirmation of deep learning techniques in general, and of convolutional neural networks (CNN) in particular, has allowed for a drastic improvement in the accuracy of texture recognition systems. However, their performance may be dampened by the fact that texture images are often characterized by color distributions that are unusual with respect to those seen by the networks during their training. In this paper we will show how suitable color balancing models allow for a significant improvement in the accuracy in recognizing textures for many CNN architectures. The feasibility of our approach is demonstrated by the experimental results obtained on the RawFooT dataset, which includes texture images acquired under several different lighting conditions.
机译:纹理分类在计算机视觉中具有悠久的历史。在过去的十年中,对深度学习技术的普遍肯定,尤其是对卷积神经网络(CNN)的强烈肯定,使得纹理识别系统的准确性有了极大的提高。但是,纹理图像的特征通常是颜色分布,而这些颜色分布相对于网络在训练过程中所看到的颜色分布是不寻常的,因此可能会削弱它们的性能。在本文中,我们将展示合适的色彩平衡模型如何显着提高许多CNN架构的纹理识别精度。通过RawFooT数据集获得的实验结果证明了我们方法的可行性,其中包括在几种不同光照条件下获取的纹理图像。

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