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Fractal-based classification of natural textures

机译:基于分形的自然纹理分类

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摘要

Texture classification is an important first step in image segmentation and image recognition. The classification algorithm must be able to overcome distortions, such as scale, aspect and rotation changes in the input texture. In this paper, a new fractal model for texture classification is presented. The model is based on fractional Brownian motion (FBM). It is also shown that this model is invariant to changes in incident light; empirical results are also given. The isotropic nature of Brownian motion is particularly useful for outdoor applications, where the viewing direction may change. Classification results of this model are presented; comparisons with other texture measurement models indicate that the incremental FBM (IFBM) model has better performance for the samples tested.
机译:纹理分类是图像分割和图像识别中重要的第一步。分类算法必须能够克服失真,例如输入纹理中的比例,纵横比和旋转变化。本文提出了一种用于纹理分类的新的分形模型。该模型基于分数布朗运动(FBM)。还表明该模型对于入射光的变化是不变的。还给出了经验结果。布朗运动的各向同性性质对于观看方向可能会改变的户外应用特别有用。给出了该模型的分类结果;与其他纹理测量模型的比较表明,增量FBM(IFBM)模型对测试的样品具有更好的性能。

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