首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A robust multi-kernel change detection framework for detecting leaf beetle defoliation using Landsat 7 ETM+ data
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A robust multi-kernel change detection framework for detecting leaf beetle defoliation using Landsat 7 ETM+ data

机译:使用Landsat 7 ETM +数据检测叶甲虫脱叶的强大多核变化检测框架

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A robust non-parametric framework, based on multiple Radial Basic Function (RBF) kernels, is proposed in this study, for detecting land/forest cover changes using Landsat 7 ETM+ images. One of the widely used frameworks is to find change vectors (difference image) and use a supervised classifier to differentiate between change and no-change. The Bayesian Classifiers e.g. Maximum Likelihood Classifier (MLC), Naive Bayes (NB), are widely used probabilistic classifiers which assume parametric models, e.g. Gaussian function, for the class conditional distributions. However, their performance can be limited if the data set deviates from the assumed model. The proposed framework exploits the useful properties of Least Squares Probabilistic Classifier (LSPC) formulation i.e. non-parametric and probabilistic nature, to model class posterior probabilities of the difference image using a linear combination of a large number of Gaussian kernels. To this end, a simple technique, based on 10-fold cross-validation is also proposed for tuning model parameters automatically instead of selecting a (possibly) suboptimal combination from pre-specified lists of values. The proposed framework has been tested and compared with Support Vector Machine (SVM) and NB for detection of defoliation, caused by leaf beetles (Paropsisterna spp.) in Eucalyptus nitens and Eucalyptus globulus plantations of two test areas, in Tasmania, Australia, using raw bands and band combination indices of Landsat 7 ETM+. It was observed that due to multi-kernel non-parametric formulation and probabilistic nature, the LSPC outperforms parametric NB with Gaussian assumption in change detection framework, with Overall Accuracy (OA) ranging from 93.6% (k = 0.87) to 97.4% (k = 0.94) against 85.3% = 0.69) to 93.4% (k = 0.85), and is more robust to changing data distributions. Its performance was comparable to SVM, with added advantages of being probabilistic and capable of handling multi-class problems naturally with its original formulation. (C) 2016 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:在这项研究中,提出了一个基于多个径向基函数(RBF)内核的健壮的非参数框架,用于使用Landsat 7 ETM +图像检测土地/森林覆盖率变化。广泛使用的框架之一是找到变化向量(差异图像)并使用监督分类器来区分变化和无变化。贝叶斯分类器例如最大似然分类器(MLC),朴素贝叶斯(NB)是广泛采用的概率分类器,其采用参数化模型,例如高斯函数,用于类条件分布。但是,如果数据集偏离假定的模型,则它们的性能可能会受到限制。提出的框架利用最小二乘概率分类器(LSPC)公式的有用属性(即非参数和概率性质),使用大量高斯核的线性组合来建模差异图像的类后验概率。为此,还提出了一种基于10倍交叉验证的简单技术来自动调整模型参数,而不是从预先指定的值列表中选择(可能)次优组合。已对拟议的框架进行了测试,并与支持向量机(SVM)和NB进行了比较,以检测由澳大利亚塔斯马尼亚州两个试验区的桉树和桉树人工林的叶甲虫(Paropsisterna spp。)引起的落叶。 Landsat 7 ETM +的频段和频段组合索引。据观察,由于多核非参数公式化和概率性质,在变化检测框架中,LSPC在高斯假设的情况下优于参数NB,总体准确度(OA)介于93.6%(k = 0.87)至97.4%(k = 0.94),而从85.3%= 0.69)到93.4%(k = 0.85),并且对于更改数据分布更稳定。它的性能可与SVM媲美,并具有附加的优势,即概率高,并且能够以其原始公式自然地处理多类问题。 (C)2016国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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