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Methodology for Band Selection of Hyperspectral Images Using Genetic Algorithms and Gaussian Maximum Likelihood Classifier

机译:使用遗传算法和高斯最大似然分类器的高光谱图像波段选择方法

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Remote Sensing is a technique to obtain data from objects without physical contact using sensors. If it is performed by hyperspectral sensors, then is possible to have a large number of bands that allows many applications. In this case, a large amount of data needs to be processed and analyzed, and therefore the practical use of these images have challenges with storage, transport and processing time. Another issue is that many of these bands contain redundant information due to high correlation between them that can cause instability in the convergence of computing processes. Because of these problems there is a need to select important bands to be processed. In many monitoring applications through remote sensing prior knowledge of areas can be used to improve the processing. Algorithms that use this information are known as supervised methods. This study introduces a methodology for band selection based on Genetic Algorithms and Gaussian Maximum Likelihood Classifier. The results were significant and demonstrate that the proposed method can reduce about 26,56% of the number of bands in hyperspectral images maintaining good quality for interpretation. The result of the similarity of the segmentation of images generated with fewer bands and more bands in the proposed methodology and the other algorithm were also compared. With the results expected to apply the proposed methodology in practical work and further study.
机译:遥感是一种无需使用传感器进行物理接触即可从物体获取数据的技术。如果它是由高光谱传感器执行的,则可能具有允许许多应用的大量频带。在这种情况下,需要处理和分析大量数据,因此这些图像的实际使用面临着存储,传输和处理时间方面的挑战。另一个问题是,这些频带中的许多频带由于它们之间的高度相关性而包含冗余信息,这可能导致计算过程的收敛不稳定。由于这些问题,需要选择要处理的重要频带。在通过遥感进行的许多监视应用中,可以使用区域的先验知识来改进处理。使用此信息的算法称为监督方法。本研究介绍了一种基于遗传算法和高斯最大似然分类器的频带选择方法。结果是有意义的,并证明了所提出的方法可以减少高光谱图像中约26.56%的条带数量,从而保持良好的解释质量。还比较了在所提出的方法和其他算法中以更少的频带和更多的频带生成的图像的分割的相似性的结果。结果有望将所提出的方法应用于实际工作和进一步研究。

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