利用卫星图像进行城市地区目标识别的监督分类

Hazrat Ali, A. A. Awan, Sanaullah Khan, Omer Shafique, A. Rahman, Shahid Khan
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引用次数: 3

摘要

本文提出了一种实现卫星图像分类的有效方法。该方法是基于像素级的研究,利用各种特征,如相关性,均匀性,能量和对比度。在本研究中,使用灰度图像来训练分类模型。对于监督分类,采用了支持向量机(SVM)和Naïve贝叶斯两种分类技术。对于灰度图像使用的纹理特征,Naïve贝叶斯表现更好,总体准确率为76%,而SVM的准确率为68%。在50 × 50和70 × 70两种不同的窗口尺寸下进行实验,计算时间。对于窗口大小为70 × 70的单个图像,所需的计算时间为27秒,对于窗口大小为50 × 50的图像,所需的计算时间为45秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised classification for object identification in urban areas using satellite imagery
This paper presents a useful method to achieve classification in satellite imagery. The approach is based on pixel level study employing various features such as correlation, homogeneity, energy and contrast. In this study gray-scale images are used for training the classification model. For supervised classification, two classification techniques are employed namely the Support Vector Machine (SVM) and the Naïve Bayes. With textural features used for gray-scale images, Naïve Bayes performs better with an overall accuracy of 76% compared to 68% achieved by SVM. The computational time is evaluated while performing the experiment with two different window sizes i.e., 50 × 50 and 70 × 70. The required computational time on a single image is found to be 27 seconds for a window size of 70 × 70 and 45 seconds for a window size of 50 × 50.
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