多光谱卫星图像分类的监督图像分类技术性能分析

Adil Nawaz, Zahid Iqbal, S. Ullah
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引用次数: 3

摘要

遥感技术在作物制图和管理中得到了广泛的应用。可以以较低的成本获得地球各个部分的高分辨率多光谱数据。选择合适的决策规则和合适的光谱波段是获得准确分类结果的关键。由于需要找到一种耗时少、资源少的准确的决策规则,所以需要根据分类算法的分类精度、耗时、计算量、可靠性等对其进行性能分析。利用2009年07月03日在西班牙巴塞罗那采集的41.3833°N, 2.1833°位置的SPOT 5图像,采用最大似然、平行六面体和Mahalanobis距离分类算法对SPOT图像进行分类。以原始图像的一半分辨率创建了原始图像的空间子集。在本研究中,首先使用QUAC(快速大气校正)对图像进行大气校正。利用不同土地类别的光谱剖面提取不同土地类别的光谱特征。然后使用最大似然、马氏距离和平行六面体分类器/决策规则对整个图像进行分类。为了提高分类效果,对分类后的图像进行了聚类和筛分。最大似然分类器优于其他分类器,即Mahalanobis Distance和平行六面体分类器,总体精度(OAA)为99.17%。然而,这些分类器在分类某些感兴趣的类别时显示出良好的准确性,例如,Mahalanobis分类器在分类水体方面优于最大似然分类器。结果还表明,波段选择对于图像的准确分类也是至关重要的。同一位置的光谱子集图像(去除近红外波段)的分类精度明显低于原始图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance analysis of supervised image classification techniques for the classification of multispectral satellite imagery
Remote Sensing is extensively used for crop mapping and management in current era. High resolution multispectral data of every part of earth is available at relatively low cost. Selection of appropriate decision rule and appropriate spectral bands is critical for obtaining accurate classification results. Need to find an accurate decision rule which is less time consuming and needs less resources leads to the performance analysis of different classification algorithms on the basis of their classification accuracy, time consumption, computational requirements, reliability etc. A SPOT 5 image acquired on 2009-07-03 from Barcelona city of Spain located at 41.3833° N, 2.1833°, and the classification algorithms i.e. Maximum Likelihood, Parallelepiped, and Mahalanobis Distance classifiers were used for the classification of the SPOT image. A spatial subset of the original imagery was created with resolution half of the original image. In this research, imagery was first atmospherically corrected using QUAC (Quick Atmospheric Correction). The spectral signature of different land classes were extracted using the spectral profile of each individual land class. The whole imagery was then classified using three Classifiers/Decision Rules i.e. Maximum Likelihood, Mahalanobis Distance and Parallelepiped Classifier. The post classification procedures i.e. clump and sieve were applied to the classified imagery to improve classification results. Maximum Likelihood Classifier outperforms other classifiers i.e. Mahalanobis Distance and Parallelepiped Classifier with Overall Accuracy (OAA) of 99.17 per cent. However these classifiers show good accuracy for classification of some classes of interest for instance the Mahalanobis Classifier outperforms the Maximum Likelihood Classifier in classifying water bodies. Results also show that the band selection is also critical in accurate classification of the imagery. The spectrally subsetted images (NIR band removed) of the same place showed very less classification accuracy than that of the original image.
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