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Optimal Feature Selection for the Classification of Hyperspectral Imagery Using Adaptive Spectral-Spatial Clustering

机译:使用自适应光谱空间聚类对高光谱图像分类的最佳特征选择

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Hyperspectral images captured through the hyperspectral sensors play an imperative part in remote sensing applications in the present context. Unlike traditional images sensed with few bands in the visible spectrum, the hyperspectral (HS) images are obtained with hundreds of spectral band ranges from infrared to ultraviolet regions. Because of its vast spatial and spectral data, it requires an extensive computational system for processing and its hidden features are needed to be unveiled in an effective manner specifically for the classification of HS imagery. This approach exploits the high spectral band correlation and rich spatial information of the HS images for the generation of feature vectors. To attain optimal feature space for the best probable classification, an adaptive approach is incorporated to adaptively choose spectral-spatial features for feature selection to classify the pixels effectively. Furthermore, the HS image encompasses several bands including noisy bands. To categorize the images with great accuracy, it is suggested to eradicate the noisy bands whilst retaining the informative bands. In this research, an adaptive spectral-spatial feature selection scheme is proposed for HS images where the extremely correlated representative bands are considered for analysis with uncorrelated and noisy spectral bands are judiciously discarded during its classification process. This hybrid approach not merely diminishes the computational time and also improves the general classification accuracy significantly. The empirical result displays that the proposed work surpasses the conventional approach of HS image classification systems.
机译:通过高光谱传感器捕获的高光谱图像在本文上下文中扮演遥感应用中的势在必一部分。与可见光谱中的少量带感测的传统图像不同,用来自红外线到紫外区域的数百个光谱带的测量值获得高光谱(HS)图像。由于其巨大的空间和光谱数据,它需要进行广泛的计算系统,并且需要以有效的方式揭开其隐藏特征,具体用于HS图像的分类。该方法利用HS图像的高光谱带相关和丰富的空间信息来产生特征向量。为了获得最佳分类的最佳特征空间,将自适应方法结合到自适应地选择用于特征选择的频谱空间特征,以有效地对像素进行分类。此外,HS图像包括多个频带,包括嘈杂的频带。为了以极高的准确性对图像进行分类,建议消除嘈杂的乐队,同时保留信息乐队。在该研究中,提出了一种自适应光谱空间特征选择方案,用于HS图像,其中考虑使用不相关的频带的极其相关的代表频带,在其分类过程期间明智地丢弃。这种混合方法不仅可以减少计算时间,并且还显着提高了一般分类精度。经验结果显示所提出的工作超越了HS图像分类系统的传统方法。

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