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A New Method Based on Fused Features and Fusion of Multiple Classifiers Applied to Texture Segmentation

机译:基于融合特征和多分类器融合的纹理分割新方法

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Texture image segmentation consists of two stages: feature extraction and classification. The new method advanced in this paper fuses the Log-Gabor filter and DCT features in the first stage, then uses the fusion of Fuzzy c-Means (FCM) and Support Vector Machines (SVM) classifier to cluster the fused feature sets. The fused feature sets produce higher feature space separations, and the fusion of multi-classifiers performs the better clustering effect. The new method is demonstrated to produce higher segmentation accuracies relative to the individual feature and individual classifier, as well as outperform individual feature for noisy images with different noise magnitudes. The fused features and classifier fusion are advocated as means for improving texture segmentation performance.
机译:纹理图像分割包括两个阶段:特征提取和分类。本文提出的新方法在第一阶段融合了Log-Gabor滤波器和DCT特征,然后使用模糊c均值(FCM)和支持向量机(SVM)分类器的融合来对融合的特征集进行聚类。融合的特征集产生更高的特征空间分离,并且多分类器的融合表现出更好的聚类效果。相对于单个特征和单个分类器,新方法被证明可以产生更高的分割精度,并且对于具有不同噪声幅度的嘈杂图像,其性能要优于单个特征。融合特征和分类器融合被认为是改善纹理分割性能的手段。

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    《》|2007年|2508-2512|共5页
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    Li Yi; Yingle; Fan; Jian; Xiang;

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