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Remote Sensing Image Classification Based on Improved Fast Independent Component Analysis

机译:基于改进的快速独立分量分析的遥感图像分类

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The increasing requirement of classification categories is followed by the increasing probabilities of wrong classification and the decreasing classification speed.If we can separate certain types of pixels out in advance,and then classify the remaining pixels,we can reduce the probabilities of mistakes effectively.This paper proposed an improved Fast Independent Component Analysis (ICA) based remote sensing image classification algorithm.Firstly we analyzed the core iterative process of Fast-ICA algorithm,and adopted adaptive step size control in our search strategy,thus avoid large number of iterations caused by too small or too large step.Secondly,due to the initial value of Fast-ICA algorithm effects the results very much,a favorable initial matrix was selected before our iterative process.Next we use the improved algorithm to separate out certain types of pixels in advance,in such a manner to simplify the following classification.At last we compared the results of this algorithm with general Fast-ICA algorithm、 principal component analysis (PCA) and ratio transformation.The experiment result shows the effectiveness of using this algorithm in image classification.
机译:分类类别要求的增加是错误分类概率增加,分类速度降低的原因。如果能够提前将某些类型的像素分离出来,然后对剩余的像素进行分类,就可以有效地减少错误的概率。论文提出了一种改进的基于快速独立分量分析(ICA)的遥感图像分类算法。首先,对Fast-ICA算法的核心迭代过程进行了分析,并在搜索策略中采用了自适应步长控制,避免了由迭代法引起的大量迭代。其次,由于Fast-ICA算法的初始值对结果影响很大,因此在迭代过程之前选择了一个有利的初始矩阵。接下来,我们使用改进的算法来分离出某些类型的像素以简化以下分类的方式进行了改进。最后,我们比较了该算法的结果w实验结果表明了该算法在图像分类中的有效性。

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