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Intelligent Classification Method of Remote Sensing Image Based on Big Data in Spark Environment

机译:基于火花环境大数据的遥感图像智能分类方法

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In addition to providing interactive queries, Spark can also optimize the iteration workload. The processing of remote sensing image is also a hot topic in recent years. This paper improves the traditional image classification technology based on K-means algorithm, and proposes a new hyperspectral image clustering method combined with spectral clustering method. On the basis of feature dimensionality reduction of hyperspectral image data, K-means algorithm is used for rough clustering of images, and then spectral clustering method is used for quadratic clustering of the clustering results. Compared with the traditional K-means clustering algorithm, the simulation results show that this method can effectively improves the classification accuracy of image clustering. The comparison experiments between simulated data and real hyperspectral data show that this method has the best clustering performance compared with the single K-means or spectral clustering method.
机译:除了提供交互式查询外,Spark还可以优化迭代工作负载。近年来,遥感图像的处理也是一个热门话题。本文提高了基于K-Means算法的传统图像分类技术,提出了一种与光谱聚类方法结合的新的高光谱图像聚类方法。在高光谱图像数据的特征维度降低的基础上,K-Means算法用于图像的粗群,然后使用谱聚类方法用于群集结果的二次聚类。与传统的K-Means聚类算法相比,仿真结果表明,该方法可以有效提高图像聚类的分类精度。模拟数据和实际高光谱数据之间的比较实验表明,与单k型K均值或光谱聚类方法相比,该方法具有最佳的聚类性能。

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