基于Gabor纹理特征和支持向量机的卫星图像分类

Jin-Tsong Hwang, K. Chang, Hun-chin Chiang
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引用次数: 9

摘要

在图像区域分割中,纹理是一个非常重要的因素。纹理的应用包括工业检测、物体距离和方向估计、形状分析、卫星成像和医疗诊断。本文提出了一种基于Gabor滤波器计算一组纹理测度的方法。提出了基于Gabor滤波器的时频变换纹理识别方法。在Gabor变换中,信号可以用由平移高斯窗调制的正弦波来表示。本文采用Gabor纹理特征结合图像原始波段、PCA和NDVI作为SVM和Decision Tree分类的训练样本特征向量。最后对传统的极大似然分类方案进行了比较研究。在大多数情况下,SVM方法在这三种方法中给出了最高的正确分类率。决策树和支持向量机各有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Satellite image classification based on Gabor texture features and SVM
The texture is a very important factor in region-based segmentation of images. Texture Applications include industrial inspection, estimation of object range and orientation, shape analysis, satellite imaging, and medical diagnosis. In this paper we present a methodology based on computing a set of textural measures with Gabor filter. The time-frequency transformed based method of texture discrimination, which is in turn based on Gabor filters is done. In Gabor transform, a signal can be represented in terms of sinusoids that are modulated by translated Gaussian windows. In this paper, the Gabor texture features combined with original bands of image, PCA, and NDVI were adopted as the characteristic vector of training samples for SVM, and Decision Tree classification. Finally, traditional classification schemes of Maximum Likelihood were comparatively studied. For most of the cases, the SVM method gave the highest correct classification rate within these three methodologies. Decision tree and SVM have their superiority respectively.
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