The Application of the Model of High-Speed Pixel Clustering in Problems of Preprocessing of the Images of the Remote Sensing of the Earth

I. Khanykov
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Abstract

The purpose of the research is to use the modified Ward’s method in high-speed processing of full-HD images of the remote sensing of the Earth. The classical Ward’s method is modified by dividing the computational process into three successive stages. The first stage quickly builds a coarse hierarchy of approximations. The second stage performs a quality improvement of the specified partition for a fixed number of colors (clusters). The third stage is the clustering of the superpixels using the Ward’s method. The software-algorithmic toolkit consists of four operations on clusters of pixels and image segments: merge operation joins together two clusters; divide operation reversibly disjoins the selected cluster into two; split operation extracts the part of the cluster into individual cluster; correct operation reclassifies pixels by extracting from one cluster and inserting into another cluster. The quality is assessed by the total squared error. The quality improvement is provided by iterative execution of a combination of merge and divide operations of pixel clusters, in particular image segments. One of the clusters (segments) is divided in two and a pair of other mismatched with it is combined into one according to the criterion of the minimum increment of the total squared error. The proposed modified Ward’s method is appropriate in processing of fullHD images of the remote sensing of the Earth. The results of processing in pure segmentation and clustering modes are compared. The proposed pixel clustering model is appropriate in high-speed processing of the fullHD images. The pixel clustering in comparison with image segmentation allows to define in more detail both the contours of objects of interest and their internal structure
高速像元聚类模型在地球遥感图像预处理问题中的应用
本研究的目的是利用改进的Ward方法对全高清地球遥感影像进行高速处理。通过将计算过程划分为三个连续的阶段,对经典的Ward方法进行了改进。第一阶段快速构建粗略的近似层次结构。第二阶段为固定数量的颜色(簇)执行指定分区的质量改进。第三阶段是使用Ward的方法对超像素进行聚类。该软件算法工具包包括对像素和图像段集群的四种操作:合并操作将两个集群连接在一起;分割操作可逆地将所选的集群拆分为两个;拆分操作将集群的一部分提取成单个集群;正确的操作是通过从一个聚类中提取像素并插入到另一个聚类中来重新分类像素。质量由总平方误差来评定。质量改进是通过迭代执行像素簇,特别是图像段的合并和分割操作的组合来提供的。将其中一个聚类(片段)分成两个,并根据总平方误差增量最小的准则将另外一对不匹配的聚类(片段)合并为一个聚类(片段)。本文提出的改进Ward方法适用于全高清地球遥感图像的处理。比较了纯分割和聚类两种模式下的处理结果。所提出的像素聚类模型适用于全高清图像的高速处理。与图像分割相比,像素聚类允许更详细地定义感兴趣对象的轮廓及其内部结构
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