Comparison between Possibilistic c-Means (PCM) and Artificial Neural Network (ANN) Classification Algorithms in Land use/ Land cover Classification

G. Ganbold, Stanley Chasia
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引用次数: 5

Abstract

There are several statistical classification algorithms available for land use/land cover classification. However, each has a certain bias or compromise. Some methods like the parallel piped approach in supervised classification, cannot classify continuous regions within a feature. On the other hand, while unsupervised classification method takes maximum advantage of spectral variability in an image, the maximally separable clusters in spectral space may not do much for our perception of important classes in a given study area. In this research, the output of an ANN algorithm was compared with the Possibilistic c-Means an improvement of the fuzzy c-Means on both moderate resolutions Landsat8 and a high resolution Formosat 2 images. The Formosat 2 image comes with an 8m spectral resolution on the multispectral data. This multispectral image data was resampled to 10m in order to maintain a uniform ratio of 1:3 against Landsat 8 image. Six classes were chosen for analysis including: Dense forest, eucalyptus, water, grassland, wheat and riverine sand. Using a standard false color composite (FCC), the six features reflected differently in the infrared region with wheat producing the brightest pixel values. Signature collection per class was therefore easily obtained for all classifications. The output of both ANN and FCM, were analyzed separately for accuracy and an error matrix generated to assess the quality and accuracy of the classification algorithms. When you compare the results of the two methods on a per-class-basis, ANN had a crisper output compared to PCM which yielded clusters with pixels especially on the moderate resolution Landsat 8 imagery.
可能性c均值(PCM)与人工神经网络(ANN)分类算法在土地利用/土地覆盖分类中的比较
有几种统计分类算法可用于土地利用/土地覆盖分类。然而,每个人都有一定的偏见或妥协。一些方法,如监督分类中的并行管道方法,不能对特征内的连续区域进行分类。另一方面,虽然无监督分类方法最大限度地利用了图像中的光谱可变性,但光谱空间中最大可分离的聚类可能对我们在给定研究区域中重要类别的感知没有太大帮助。在本研究中,我们比较了人工神经网路(ANN)演算法的输出,以及在中分辨率Landsat8和高分辨率Formosat 2影像上,模糊c-Means的改进后的可能性c-Means。在多光谱数据上,Formosat 2的图像具有8米的光谱分辨率。为了与Landsat 8图像保持1:3的均匀比例,该多光谱图像数据被重新采样到10m。选取茂密森林、桉树、水、草地、小麦和河沙6类进行分析。使用标准的假彩色合成(FCC),六个特征在红外区域的反射不同,小麦产生最亮的像素值。因此,很容易获得所有分类的每个类的签名集合。分别对人工神经网络和FCM的输出进行准确率分析,并生成误差矩阵来评估分类算法的质量和准确率。当你在每个类别的基础上比较两种方法的结果时,与PCM相比,ANN的输出更清晰,PCM产生具有像素的簇,特别是在中等分辨率的Landsat 8图像上。
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