基于图像处理技术的生物污垢检测

V. Grishkin, O. Iakushkin, N. Stepenko
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引用次数: 4

摘要

进行生物污垢检测的传统方法是基于探测物体表面进行后续实验室研究。这种方法耗费大量精力,费用昂贵,而且需要专家咨询。了解生物污染物的类型对于保护物体免受其有害影响是必要的。在本文中,我们提出了一种确定存在于物体表面的生物污染物类型的方法。该方法使用对象的图像集合作为输入。该集合包含在可见光和近红外光谱波段获得的图像。在对该系列进行预处理时,将所有图像转换为选定的拍摄点,并去除背景。特征向量由正式植被指数组合而成。为了识别生物污染物的类型,我们使用了基于RBF核的SVM预训练分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biofouling detection based on image processing technique
Traditional methods for performing biofouling detection are based upon probing object surfaces for subsequent laboratory research. Such methods result in large effort, they are expensive, and require expert consultations. Knowledge of the type of biological contaminants is necessary to protect objects from their harmful impact. In this paper we propose a method for determination of types of biological contaminants existing on the objects surface. The proposed method uses a collection of object's images as input. The collection contains images obtained in the visible and near infrared spectral bands. During pre-processing the series, all images are converted to a selected shooting point, and the background is removed. Feature vector is built from combinations of formal vegetation indices. To recognize the type of biological contaminants, we used a pre-trained classifier based on SVM method with RBF kernel.
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