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Texture classification and neural network methods

机译:纹理分类和神经网络方法

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摘要

Some neural network based methods for texture classification and segmentation have been published. The motivation for this kind of work might be doubted, because there are many traditional methods that work well. In this paper, a neural network based method for stochastic texture classification and segmentation suggested by Visa is compared with traditional K- means and k-nearest neighbor classification methods. Both simulated and real data are used. The complexity of the considered methods is also analyzed. The conclusion is the K-means method is the least successful of the three tested methods. The developed method is slightly more powerful than the k-nearest neighbor method for map sizes 9 $MUL 9 and 10 $MUL 10. The differences are, however, quite small. This means that the choice of classification method depends more on other aspects, like computational complexity and learning capability, than on the classification capability.
机译:已经发布了一些基于神经网络的纹理分类和分割方法。可能怀疑这种工作的动机,因为有许多传统方法效果很好。本文将基于神经网络的基于神经网络的用于随机纹理分类和签证建议的分割方法与传统的K均值和K最近邻分类方法进行了比较。使用模拟和实际数据。还分析了所考虑方法的复杂性。结论是K-Means方法是三种测试方法的最不成功的方法。开发的方法比MAL 9 $ MUL 9和10 $ 10 $ 10 $ 10 $ 10 $ 10 $ 10 $ 10的k最近邻邻法略强。然而,差异很小。这意味着分类方法的选择更多地取决于其他方面,如计算复杂性和学习能力,而不是在分类能力上。

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