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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Classification of Remotely Sensed Images Using the GeneSIS Fuzzy Segmentation Algorithm
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Classification of Remotely Sensed Images Using the GeneSIS Fuzzy Segmentation Algorithm

机译:基于GeneSIS模糊分割算法的遥感图像分类。

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In this paper, we propose an integrated framework of the recently proposed Genetic Sequential Image Segmentation (GeneSIS) algorithm. GeneSIS segments the image in an iterative manner, whereby at each iteration, a single object is extracted via a genetic algorithm-based object extraction method. This module evaluates the fuzzy content of candidate regions, and through an effective fitness function design provides objects with optimal balance between fuzzy coverage, consistency and smoothness. GeneSIS exhibits a number of interesting properties, such as reduced over-/undersegmentation, adaptive search scale, and region-based search. To enhance the capabilities of GeneSIS, we incorporate here several improvements of our initial proposal. On one hand, two modifications are introduced pertaining to the object extraction algorithm. Specifically, we consider a more flexible representation of the structural elements used for the object's extraction. Furthermore, in view of its importance, the consistency criterion is redefined, thus providing a better handling of the ambiguous areas of the image. On the other hand we incorporate three tools properly devised, according to the fuzzy principles characterizing GeneSIS. First, we develop a marker selection strategy that creates reliable markers, particularly when dealing with ambiguous components of the image. Furthermore, using GeneSIS as the essential part, we consider a generalized experimental setup embracing two different classification schemes for remote sensing images: the spectral-spatial classification and the supervised segmentation methods. Finally, exploiting the inherent property of GeneSIS to produce multiple segmentations, we propose a segmentation fusion scheme. The effectiveness of the proposed methodology is validated after thorough experimentation on four data sets.
机译:在本文中,我们提出了最近提出的遗传序列图像分割(GeneSIS)算法的集成框架。 GeneSIS以迭代方式对图像进行分割,从而在每次迭代中,通过基于遗传算法的对象提取方法来提取单个对象。该模块评估候选区域的模糊内容,并通过有效的适应度函数设计为对象提供模糊覆盖范围,一致性和平滑度之间的最佳平衡。 GeneSIS具有许多有趣的特性,例如减少了过度/过度细分,自适应搜索范围和基于区域的搜索。为了增强GeneSIS的功能,我们在此处合并了最初提案的一些改进。一方面,引入了与对象提取算法有关的两个修改。具体而言,我们考虑了用于对象提取的结构元素的更灵活表示。此外,鉴于其重要性,重新定义了一致性标准,因此可以更好地处理图像的模糊区域。另一方面,根据GeneSIS的模糊原理,我们结合了三个经过适当设计的工具。首先,我们开发一种标记选择策略,该策略可以创建可靠的标记,尤其是在处理图像的歧义成分时。此外,使用GeneSIS作为必要部分,我们考虑了一种包含两种不同遥感影像分类方案的广义实验装置:光谱空间分类和监督分割方法。最后,利用GeneSIS的固有特性来产生多个分割,我们提出了一种分割融合方案。经过对四个数据集进行全面试验后,验证了所提出方法的有效性。

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