基于MRF模型的NC分类器在不同距离测度和参数下的效果研究

Q4 Computer Science 测绘地理信息 Pub Date : 2023-04-28 DOI:10.58825/jog.2023.17.1.79
Shilpa Suman, Ashok Kumar, Dheeraj Kumar
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引用次数: 0

摘要

由于卫星图像的像素噪声,降低了卫星图像分类的精度和计算复杂度。因此,需要基于空间上下文信息的分类器来处理噪声像素并获得邻域信息。本文提出了基于噪声聚类(NC)的马尔可夫随机场(MRF)模型(SP、DA(H1、H2、H3和H4)),这些模型处理噪声像素并提供信息。平滑先验(SP)和不连续自适应(DA)模型分别用于通过平滑图像和显示类的边界来降低噪声。本研究对基于MRF模型的NC分类器SP和DA在不同距离测度和参数下进行了比较研究。使用Haridwar地区的Formosat-2和Landsat-8多光谱图像,测试了基于NC分类器的MRF模型,用于对桉树、水、河岸沙、草地、密林和小麦进行分类。对于m=1.3、λ=0.2、δ=104、γ=0.8和平均绝对差,DA(H1)模型提供了最佳的总体精度(85.09%)。
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Study the effect of MRF Model based NC classifier with different distance measures and parameters
The accuracy of satellite image classification and the computational complexity is reduced due to the image's noisy pixels. Therefore, spatial contextual information-based classifiers are required to handle the noisy pixels and obtain the neighborhood information. This paper represents Noise clustering (NC) based Markov Random Field (MRF) models (SP, DA (H1, H2, H3, and H4)) that handle the noisy pixels and provide the information. The Smoothing Prior (SP) and Discontinuity Adaptive (DA) models are useful for reducing noise by smoothing the images and showing the boundary of classes, respectively. This study has carried out a comparative study among MRF model-based NC classifiers SP and DA for different distance measures and parameters. MRF models based on NC classifiers were tested for classifying Eucalyptus, Water, Riverine sand, Grassland, Dense Forest, and Wheat classes using the Formosat-2 and Landsat-8 multispectral images of the Haridwar area. The DA (H1) model provides the best overall accuracy (85.09%) for m=1.3, λ=0.2, δ=104,γ=0.8, and Mean Absolute Difference.
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来源期刊
测绘地理信息
测绘地理信息 Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
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4458
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