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A Local Search-Based GeneSIS algorithm for the Segmentation and Classification of Remote-Sensing Images

机译:基于局部搜索的GeneSIS算法在遥感图像分割与分类中的应用

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A local search-based version of the so-called genetic sequential image segmentation (GeneSIS) algorithm is presented in this paper, for the classification of remotely sensed images. The new method combines the properties of the GeneSIS framework with the principles of the region growing segmentation algorithms. Localized GeneSIS operates on a fine-segmented image obtained after preliminary watershed transformation. Segmentation proceeds by iterative expansions emanating from object cores, i.e., connected components of marked watersheds. At each expansion trial, the process involves three successively performed operations: 1) generation of the object’s neighborhood to a specified order; 2) local exploration of the neighborhood through an evolutionary algorithm to identify the best expansion to be merged; and 3) rearrangement of the object neighborhoods. We propose two priority strategies for the selection of the objects to be expanded and two different modes of operation performing either supervised or semisupervised segmentation of the image. The combination of the priority strategies and segmentation modes lead to four different implementations of localized GeneSIS. Due to the local search approach adopted here, the resulting algorithms have considerably lower execution times, while at the same time, they provide comparable classification accuracies compared to those produced by previous GeneSIS variants. Experimental analysis is conducted using a hyperspectral forest image, a multispectral agricultural image, and the Pavia Centre image over an urban area. Comparative results are also provided with existing segmentation algorithms.
机译:本文提出了一种基于搜索的本地版本的所谓的遗传序列图像分割(GeneSIS)算法,用于对遥感图像进行分类。新方法将GeneSIS框架的特性与区域增长分割算法的原理结合在一起。局部Genesis在初步分水岭转换后获得的细分图像上运行。分割是通过从对象核心(即标记分水岭的连接部分)发出的迭代扩展进行的。在每次扩展试验中,该过程都涉及三个连续执行的操作:1)按照指定顺序生成对象的邻域; 2)通过进化算法对邻域进行局部探索,以确定要合并的最佳扩展; 3)对象邻域的重新排列。我们提出了两种优先级策略来选择要扩展的对象,并提出了两种不同的操作模式来执行图像的监督或半监督分割。优先级策略和细分模式的组合导致了本地Genesis的四种不同实现。由于此处采用了本地搜索方法,因此所得算法的执行时间大大缩短,同时与以前的GeneSIS变体产生的算法相比,它们提供了可比的分类精度。使用高光谱森林图像,多光谱农业图像和市区的帕维亚中心图像进行实验分析。现有的分割算法也提供了比较结果。

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