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teaming How to Extract Rotation-Invariant and Scale-Invariant Features from Texture Images

机译:teaming如何从纹理图像中提取旋转不变和比例不变特征

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摘要

Learning how to extract texture features from noncontrolled environments characterized by distorted images is a still-open task. By using a new rotation-invariant and scale-invariant image descriptor based on steerable pyramid decomposition, and a novel multiclass recognition method based on optimum-path forest, a new texture recognition system is proposed. By combining the discriminating power of our image descriptor and classifier, our system uses small-size feature vectors to characterize texture images without compromising overall classification rates. State-of-the-art recognition results are further presented on the Brodatz data set. High classification rates demonstrate the superiority of the proposed system.
机译:学习如何从以失真图像为特征的非受控环境中提取纹理特征仍然是一项艰巨的任务。利用基于可控金字塔分解的旋转不变和尺度不变的图像描述子,以及基于最优路径森林的多类识别方法,提出了一种新的纹理识别系统。通过结合图像描述符和分类器的区分能力,我们的系统使用小尺寸特征向量来表征纹理图像,而不会影响总体分类率。最新的识别结果将进一步显示在Brodatz数据集上。高分类率证明了所提出系统的优越性。

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