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Aerial image clustering analysis based on genetic fuzzy c-means algorithm and Gabor-Gist descriptor

机译:基于遗传模糊c-均值算法和Gabor-Gist描述符的航空影像聚类分析

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In the study of identifying homogeneous regions in remote sensing images, fuzzy clustering is one of the most frequently used algorithms. Commonly used method of fuzzy cluster analysis is the fuzzy C-means algorithm(FCM), which easily traps into local optimal solution. An algorithm combining FCM with genetic algorithms is introduced for aerial remote sensing image fuzzy clustering analysis. The input image features are extracted based on a new descriptor which combines Gabor descriptor with Gist descriptor. The dimension reduction of the extracted feature vector is processed through principal component analysis. Then the extracted features from in-house aerial images dataset are clustered with proposed method. Experiment shows that this method can get a good clustering effect.
机译:在识别遥感图像中的均匀区域的研究中,模糊聚类是最常用的算法之一。模糊聚类分析的常用方法是模糊C均值算法(FCM),它很容易陷入局部最优解中。提出了一种将FCM与遗传算法相结合的算法,用于航空遥感影像的模糊聚类分析。基于新的描述符提取输入图像特征,该描述符将Gabor描述符与Gist描述符组合在一起。通过主成分分析处理提取的特征向量的降维。然后,利用所提出的方法对从内部航拍图像数据集中提取的特征进行聚类。实验表明,该方法可以获得良好的聚类效果。

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