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Computer Science and Electrical Engineering, Lule? University of Technology, S-971 87 Lule?, Sweden

机译:电脑科学与电气工程,Lule?科技大学,S-971 87 Lule ?,瑞典

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A decision fusion based method is proposed to improve unsupervised image segmentation. After the step of cluster label adjustment, each kind of texture is fixed with the same label. Then three simple fusion operators are applied according to the knowledge of multi-classifier fusion. Compared with feature fusion, decision fusion can combine the advantages of different features more intuitively and heuristically. Experimental results on textures and synthetic aperture radar (SAR) image demonstrate its superiority over feature fusion on removing the impact of noise feature and preserving the detail.
机译:提出了一种基于决策融合的方法来改善无监督的图像分割。群集标签调整步骤后,使用相同的标签固定各种纹理。然后根据多分类器融合的知识应用三个简单的融合操作员。与特征融合相比,决策融合可以更直观和启发性地将不同特性的优点结合起来。纹理和合成孔径雷达(SAR)图像上的实验结果证明了其优于特征融合的优越性,可以在消除噪声功能的影响和保护细节。

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