基于支持向量机的航空图像Enteromorpha检测

Xinghui Dong, Junyu Dong, Liang Qu
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引用次数: 2

摘要

本文介绍了一种基于支持向量机(SVM)图像特征统计学习的简易enteromorpha检测方法。该方法首先将enteromorpha图像分为两类:enteromorpha和background。然后从这两个类别中提取特征并使用它们来训练支持向量机模型。最后,利用学习到的模型逐像素地进行预测。该模型使用NTSC色彩空间中的饱和度或Gabor滤波器过滤后的图像作为输入特征,而输出类标签被处理为1或2 (enteromorpha或background),并将其分配给被预测的位置。实际上,这个应用程序只是一个两类模式分类问题。实验结果表明,该方法可以有效地用于航空图像中的enteromorpha检测。
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Enteromorpha detection in aerial images using support vector machines
In this paper, we introduce a simple approach for detecting enteromorpha based on statistical learning of image features using support vector machines (SVM). The approach first classifies an enteromorpha image into two classes: enteromorpha and background. Then it extracts features from those two classes and uses them for training the SVM model. Finally, the predicting process is carried out in a pixel by pixel manner using the learned model. The model uses saturation in NTSC color space or filtered images by Gabor filter as the input features while the output class label is treated as 1 or 2 (enteromorpha or background), which is assigned to the location that is being predicted. In fact, this application is only a two-class pattern classification problem. Experimental results show that the method can be effectively applied to detecting enteromorpha in aerial images.
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