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A Region-Based GeneSIS Segmentation Algorithm for the Classification of Remotely Sensed Images

机译:基于区域的GeneSIS分割算法在遥感图像分类中的应用

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This paper proposes an object-based segmentation/classification scheme for remotely sensed images, based on a novel variant 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-based object extraction algorithm. Contrary to the previous pixel-based GeneSIS where the candidate objects to be extracted were evaluated through the fuzzy content of their included pixels, in the newly developed region-based GeneSIS algorithm, a watershed-driven fine segmentation map is initially obtained from the original image, which serves as the basis for the forthcoming GeneSIS segmentation. Furthermore, in order to enhance the spatial search capabilities, we introduce a more descriptive encoding scheme in the object extraction algorithm, where the structural search modules are represented by polygonal shapes. Our objectives in the new framework are posed as follows: enhance the flexibility of the algorithm in extracting more flexible object shapes, assure high level classification accuracies, and reduce the execution time of the segmentation, while at the same time preserving all the inherent attributes of the GeneSIS approach. Finally, exploiting the inherent attribute of GeneSIS to produce multiple segmentations, we also propose two segmentation fusion schemes that operate on the ensemble of segmentations generated by GeneSIS. Our approaches are tested on an urban and two agricultural images. The results show that region-based GeneSIS has considerably lower computational demands compared to the pixel-based one. Furthermore, the suggested methods achieve higher classification accuracies and good segmentation maps compared to a series of existing algorithms.
机译:本文基于最近提出的遗传序列图像分割(GeneSIS)算法的一种新颖变体,提出了一种基于对象的遥感图像分割/分类方案。 GeneSIS以迭代方式对图像进行分割,从而在每次迭代中,通过基于遗传的对象提取算法来提取单个对象。与以前的基于像素的GeneSIS不同,在该基于像素的GeneSIS中,要提取的候选对象是通过其包含的像素的模糊内容进行评估的,而在新开发的基于区域的GeneSIS算法中,最初是从原始图像中获得分水岭驱动的精细分割图的,这是即将进行的GeneSIS细分的基础。此外,为了增强空间搜索功能,我们在对象提取算法中引入了更具描述性的编码方案,其中结构搜索模块由多边形表示。我们在新框架中的目标如下:增强算法在提取更灵活的对象形状方面的灵活性,确保高级别的分类准确性,并减少分割的执行时间,同时保留所有的固有属性。 GeneSIS方法。最后,利用GeneSIS的固有属性来产生多个分割,我们还提出了两种分割融合方案,它们在GeneSIS生成的分割集合中起作用。我们的方法在城市和两个农业图像上进行了测试。结果表明,与基于像素的GeneSIS相比,基于区域的GeneSIS具有较低的计算需求。此外,与一系列现有算法相比,建议的方法具有更高的分类精度和良好的分割图。

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