Decomposing Textures using Exponential Analysis

Yuan Hou, A. Cuyt, Wen-shin Lee, Deepayan Bhowmik
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引用次数: 1

Abstract

Decomposition is integral to most image processing algorithms and often required in texture analysis. We present a new approach using a recent 2-dimensional exponential analysis technique. Exponential analysis offers the advantage of sparsity in the model and continuity in the parameters. This results in a much more compact representation of textures when compared to traditional Fourier or wavelet transform techniques. Our experiments include synthetic as well as real texture images from standard benchmark datasets. The results outperform FFT in representing texture patterns with significantly fewer terms while retaining RMSE values after reconstruction. The underlying periodic complex exponential model works best for texture patterns that are homogeneous. We demonstrate the usefulness of the method in two common vision processing application examples, namely texture classification and defect detection.
使用指数分析分解纹理
分解是大多数图像处理算法的组成部分,在纹理分析中也经常需要分解。我们提出了一种利用最近的二维指数分析技术的新方法。指数分析具有模型稀疏性和参数连续性的优点。与传统的傅立叶变换或小波变换技术相比,这使得纹理的表示更加紧凑。我们的实验包括来自标准基准数据集的合成纹理图像和真实纹理图像。结果在用更少的词表示纹理模式方面优于FFT,同时保留重建后的RMSE值。底层周期性复指数模型最适合于均匀的纹理模式。通过纹理分类和缺陷检测两种常见的视觉处理应用实例,验证了该方法的有效性。
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