SVDD-based one-class land-cover mapping using optimal training samples

Muyi Li, Xiufang Zhu, Jianyu Gu, G. Shuai, Anzhou Zhao, Tong Zhou, Yaozhong Pan
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引用次数: 0

Abstract

Remotely sensed data have been widely used in the field of producing land-cover thematic maps. When dealing with single class problem, one-class classifiers proved to be more effective compared with conventional supervised classifiers. The Support Vector Data Description (SVDD), one kind of one-class classification method, has been applied to specific land-cover classifications lately. However, the sampling scheme used in previous studies does not follow the SVDD principle. In this paper, Euclidean distance and Mahalanobis distance were chosen as an index to optimize training samples in order to improve the accuracy of SVDD classification. Result shows that sample optimization do improve the classification accuracy. Besides, compared with the Euclidean distance, Mahalanobis distance is more suitable and effective for sample optimization.
基于svdd的最优训练样本一类土地覆盖制图
遥感数据已广泛应用于土地覆盖专题地图制作领域。在处理单类问题时,单类分类器比传统的监督分类器更有效。支持向量数据描述(SVDD)是一类分类方法,近年来在具体土地覆盖分类中得到了应用。然而,以往研究中使用的抽样方案并没有遵循SVDD原则。本文选择欧氏距离和马氏距离作为指标对训练样本进行优化,以提高SVDD分类的准确率。结果表明,样本优化确实提高了分类精度。此外,与欧几里得距离相比,马氏距离更适合和有效地进行样本优化。
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