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Object-oriented and pixel-based classification approach for land cover using airborne long-wave infrared hyperspectral data

机译:利用机载长波红外高光谱数据的面向对象和基于像素的土地覆盖分类方法

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Our primary objective was to explore a classification algorithm for thermal hyperspectral data. Minimum noise fraction is applied to thermal hyperspectral data and eight pixel-based classifiers, i.e., constrained energy minimization, matched filter, spectral angle mapper (SAM), adaptive coherence estimator, orthogonal subspace projection, mixture-tuned matched filter, target-constrained interference-minimized filter, and mixture-tuned target-constrained interference minimized filter are tested. The long-wave infrared (LWIR) has not yet been exploited for classification purposes. The LWIR data contain emissivity and temperature information about an object. A highest overall accuracy of 90.99% was obtained using the SAM algorithm for the combination of thermal data with a colored digital photograph. Similarly, an object-oriented approach is applied to thermal data. The image is segmented into meaningful objects based on properties such as geometry, length, etc., which are grouped into pixels using a watershed algorithm and an applied supervised classification algorithm, i.e., support vector machine (SVM). The best algorithm in the pixel-based category is the SAM technique. SVM is useful for thermal data, providing a high accuracy of 80.00% at a scale value of 83 and a merge value of 90, whereas for the combination of thermal data with a colored digital photograph, SVM gives the highest accuracy of 85.71% at a scale value of 82 and a merge value of 90. (C) 2015 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:我们的主要目标是探索热高光谱数据的分类算法。最小噪声分数应用于热高光谱数据和八个基于像素的分类器,即约束能量最小化,匹配滤波器,光谱角映射器(SAM),自适应相干估计器,正交子空间投影,混合调谐匹配滤波器,目标约束干扰最小化滤波器和混合调谐目标约束干扰最小化滤波器进行了测试。长波红外(LWIR)尚未用于分类目的。 LWIR数据包含有关对象的发射率和温度信息。使用SAM算法将热数据与彩色数码照片相结合,可获得最高的90.99%的总精度。类似地,将面向对象的方法应用于热数据。基于诸如几何形状,长度等的属性,将图像分割成有意义的对象,使用分水岭算法和应用的监督分类算法,即支持向量机(SVM),将图像分组为像素。基于像素的类别中最好的算法是SAM技术。 SVM对热数据很有用,在83的比例值和90的合并值下提供80.00%的高精度,而对于热数据与彩色数码照片的组合,SVM在热数据下提供最高的85.71%的精度。标度值为82,合并值为90。(C)2015年光电仪器工程师学会(SPIE)

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