Generating Learning Data for Hierarchical Vegetation Classification Methods using Support Vector Machine

Masatomo Suzuki, Y. Kageyama, C. Ishizawa, M. Nishida, Koshi Sato, M. Kaneko, Takashi Nagaki
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引用次数: 0

Abstract

In a previous study, we developed a method for classifying vegetation on a river bank managed by the Ministry of Land, Infrastructure, Transport and Tourism, by using images acquired from the Omonogawa River flowing through the Akita Prefecture. We focused specifically on color and texture information from those images, and proposed a method for classifying vegetation with a support vector machine, which is a pattern recognition model. However, the color features of the turf and the harmful vegetation, Fallopia japonica, were roughly the same when calculated during the same season across different years. Distinguishing images based on the acquired seasons should enable high-precision classi fi cation. Thus, in this study, we develop a learning data generation method that can classify new data. Speci fi cally, we categorize the learning data by month and determine parameters for the appropriate unlearned data. An experiment is conducted using data generated from May, June, and July of 2015 and 2016. We found that the proposed generation method can classify river bank vegetation with high accuracy in comparison with the previous approach.
基于支持向量机的分层植被分类方法学习数据生成
在之前的一项研究中,我们开发了一种方法,利用从流经秋田县的小野川河获取的图像,对由国土交通省管理的河岸上的植被进行分类。我们针对这些图像的颜色和纹理信息,提出了一种基于模式识别模型的支持向量机的植被分类方法。而在不同年份的同一季节,草皮的颜色特征与有害植被秋叶的颜色特征大致相同。根据采集的季节来区分图像,可以实现高精度的分类。因此,在本研究中,我们开发了一种可以对新数据进行分类的学习数据生成方法。具体来说,我们按月对学习数据进行分类,并为适当的未学习数据确定参数。使用2015年5月、6月、7月和2016年的数据进行实验。我们发现,与之前的方法相比,所提出的生成方法可以对河岸植被进行较高的分类精度。
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