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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Single-Species Detection With Airborne Imaging Spectroscopy Data: A Comparison of Support Vector Techniques
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Single-Species Detection With Airborne Imaging Spectroscopy Data: A Comparison of Support Vector Techniques

机译:机载成像光谱数据的单一物种检测:支持向量技术的比较

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Progress in mapping plant species remotely with imaging spectroscopy data is limited by the traditional classification framework, which carries the requirement of exhaustively defining all classes (species) encountered in a landscape. As the research objective may be to map only one or a few species of interest, we need to explore alternative classification methods that may be used to more efficiently detect a single species. We compared the performance of three support vector machine (SVM) methods designed for single-class detection—binary (one-against-all) SVM, one-class SVM, and biased SVM—in detecting five focal tree and shrub species using data collected by the Carnegie Airborne Observatory over an African savanna. Prior to this comparison, we investigated the effects of training data amount and balance on binary SVM and evaluated alternative methods for tuning one-class and biased SVMs. A key finding was that biased SVM was generally best parameterized by crown-level cross validation paired with the tuning criterion proposed by Lee and Liu . Among the different single-class methods, binary SVM showed the best overall performance (average F-scores 0.43–0.78 among species), whereas one-class SVM showed very poor performance (F-scores 0.09–0.46). However, biased SVM produced results similar to those obtained with binary SVM (F-scores 0.40–0.72), despite using labeled training data from only the focal class. Our results indicate that both binary and biased SVMs can work well for remote single-species detection, while both methods, particularly biased SVM, greatly reduce the amount of training data required compared with traditional multispecies classification.
机译:传统的分类框架限制了通过成像光谱数据远程绘制植物物种的进展,传统的分类框架要求详尽定义风景中遇到的所有类别(物种)。由于研究目标可能是仅绘制一个或几个感兴趣的物种,因此我们需要探索可用于更有效地检测单个物种的替代分类方法。我们比较了为单类检测而设计的三种支持向量机(SVM)方法(二进制(针对所有)SVM,一类SVM和有偏SVM)在使用收集的数据检测五种聚焦树和灌木物种时的性能由卡内基空中天文台拍摄的非洲大草原。在进行此比较之前,我们研究了训练数据量和平衡对二进制SVM的影响,并评估了调整一类和有偏SVM的替代方法。一个关键的发现是,偏向SVM通常最好通过冠级交叉验证与Lee和Liu提出的调整标准配对来参数化。在不同的单类方法中,二元SVM表现出最佳的总体性能(物种间的平均F分数为0.43-0.78),而一类SVM的表现则非常差(F分数为0.09-0.46)。然而,尽管仅使用焦点类的标记训练数据,但偏倚SVM产生的结果与二进制SVM(F分数0.40–0.72)相似。我们的结果表明,二进制和有偏支持向量机都可以很好地用于远程单物种检测,而与传统的多物种分类相比,这两种方法(尤其是有偏支持向量机)都大大减少了所需的训练数据量。

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