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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >One-Class Classification for Mapping a Specific Land-Cover Class: SVDD Classification of Fenland
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One-Class Classification for Mapping a Specific Land-Cover Class: SVDD Classification of Fenland

机译:映射特定陆地覆盖类的一类分类:芬兰的SVDD分类

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摘要

Remote sensing is a major source of land-cover information. Commonly, interest focuses on a single land-cover class. Although a conventional multiclass classifier may be used to provide a map depicting the class of interest, the analysis is not focused on that class and may be suboptimal in terms of the accuracy of its classification. With a conventional classifier, considerable effort is directed on the classes that are not of interest. Here, it is suggested that a one-class-classification approach could be appropriate when interest focuses on a specific class. This is illustrated with the classification of fenland, a habitat of considerable conservation value, from Landsat Enhanced Thematic Mapper Plus imagery. A range of one-class classifiers is evaluated, but attention focuses on the support-vector data description (SVDD). The SVDD was used to classify fenland with an accuracy of 97.5% and 93.6% from the user's and producer's perspectives, respectively. This classification was trained upon only the fenland class and was substantially more accurate in fen classification than a conventional multiclass maximum-likelihood classification provided with the same amount of training data, which classified fen with an accuracy of 90.0% and 72.0% from the user's and producer's perspectives, respectively. The results highlight the ability to classify a single class using only training data for that class. With a one-class classification, the analysis focuses tightly on the class of interest, with resources and effort not directed on other classes, and there are opportunities to derive highly accurate classifications from small training sets.
机译:遥感是土地覆盖信息的主要来源。通常,兴趣集中在单个土地覆盖类上。尽管可以使用常规的多类别分类器来提供描述感兴趣类别的地图,但是分析并未集中在该类别上,并且就其分类的准确性而言可能不是最佳的。使用常规的分类器,大量的精力用于不感兴趣的类。在这里,建议当兴趣集中在特定类别上时,采用一类分类方法是合适的。 Landsat Enhanced Thematic Mapper Plus影像对具有保护价值的栖息地fenland的分类进行了说明。评估了一系列一类分类器,但注意力集中在支持向量数据描述(SVDD)上。从用户和生产者的角度来看,使用SVDD对fenland进行分类的准确度分别为97.5%和93.6%。此分类仅针对fenland类别进行训练,并且在fen类别中的准确性比具有相同训练数据量的传统多类最大似然分类更为准确,后者从用户和用户的分类准确度分别为90.0%和72.0%制片人的观点。结果突出显示了仅使用该课程的训练数据对单个课程进行分类的能力。对于一类分类,分析将紧紧关注感兴趣的类,而资源和精力却不指向其他类,并且有机会从小型培训集中获得高度准确的分类。

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