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Supervised and unsupervised landuse map generation from remotely sensed images using ant based systems

机译:使用基于蚂蚁的系统根据遥感影像生成有监督和无监督的土地利用图

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摘要

The landuse or land-cover map depicts the physical coverage of the Earth's terrestrial surface according to its use. Landuse map generation from remotely sensed images is one of the challenging tasks of remote sensing technology. In this article, motivated from group forming behavior of real ants, we have proposed two novel ant based (one supervised and one unsupervised) algorithms to automatically generate landuse map from multispectral remotely sensed images. Here supervised landuse map generation is treated as a classification task which requires some labeled patterns/pixels beforehand, whereas the unsupervised landuse map generation is treated as a clustering based image segmentation problem in the multispectral space. Investigations are carried out on four remotely sensed image data. Experimental results of the proposed algorithms are compared with corresponding popular state of the art techniques using various evaluation measures. Potentiality of the proposed algorithms are justified from the experimental outcome on a number of images.
机译:土地利用或土地覆盖图根据用途描述了地球地面的物理覆盖范围。从遥感图像生成土地利用图是遥感技术的一项艰巨任务。在本文中,基于真实蚂蚁的成群行为,我们提出了两种新颖的基于蚂蚁的算法(一种监督和一种不受监督),以从多光谱遥感图像中自动生成土地利用图。在这里,有监督的土地利用图生成被视为分类任务,该任务需要事先标记一些图案/像素,而无监督的土地利用图生成则被视为多光谱空间中基于聚类的图像分割问题。对四个遥感图像数据进行了调查。使用各种评估方法,将所提出算法的实验结果与相应的流行技术进行了比较。从许多图像上的实验结果可以证明所提出算法的潜力。

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