{"title":"对高光谱卫星图像进行多元统计分析以绘制土地覆盖图","authors":"Meenakshi Dheer, Adlin Jebakumari S, Shweta Singh","doi":"10.1109/ICOCWC60930.2024.10470771","DOIUrl":null,"url":null,"abstract":"This paper analyzes hyperspectral satellite tv for pc snap shots for land cover mapping with multivariate statistical analysis (MSA). It describes the method of mapping land cowl and how the components containing the extraordinary land cowl lessons are recognized via MSA. The analysis of the facts considers the visible, near-infrared, and shortwave infrared spectra of the Landsat image facts. The diverse MSA techniques which might be used for identifying land cover kinds, such as significant thing evaluation, unbiased aspect analysis, linear discriminant analysis, multi-dimensional scaling, cluster evaluation, and correlation analysis, are explained in detail. The advantages of using MSA over conventional techniques also are mentioned. Eventually, the results are compared with the overall performance of MSA on particular land cowl sorts. It's miles concluded that MSA is a dependable technique to land cover mapping with hyperspectral satellite tv for pc pics. Multivariate statistical evaluation on hyperspectral satellite pictures offers an expansion of possibilities to categorize land cowl and resources in mapping numerous capabilities on the Earth. Such techniques consist of linear discriminant evaluation, fundamental aspect evaluation, independent component evaluation, Multivariate selection timber, Kernel Discriminant evaluation, and extra. Those fashions extract extensive statistical features from the pics, permitting more accuracy in detecting functions or classes of land cowl. Many of these techniques can also be integrated with different techniques and tree-primarily based classifiers to refine the land cover type further. Furthermore, these methods may be used along with remotely sensed data, including topographic maps, to provide extra insight into land cover's spatial and temporal characteristics. In precis, hyperspectral satellite tv for pc imagery offers a powerful device for knowledge of the Earth's surface, and multivariate statistical methods substantially enhance the accuracy of land cover mapping efforts.","PeriodicalId":518901,"journal":{"name":"2024 International Conference on Optimization Computing and Wireless Communication (ICOCWC)","volume":"101 ","pages":"1-6"},"PeriodicalIF":0.0000,"publicationDate":"2024-01-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Multivariate Statistical Analysis on Hyper Spectral Satellite Images for Land Cover Mapping\",\"authors\":\"Meenakshi Dheer, Adlin Jebakumari S, Shweta Singh\",\"doi\":\"10.1109/ICOCWC60930.2024.10470771\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"This paper analyzes hyperspectral satellite tv for pc snap shots for land cover mapping with multivariate statistical analysis (MSA). It describes the method of mapping land cowl and how the components containing the extraordinary land cowl lessons are recognized via MSA. The analysis of the facts considers the visible, near-infrared, and shortwave infrared spectra of the Landsat image facts. The diverse MSA techniques which might be used for identifying land cover kinds, such as significant thing evaluation, unbiased aspect analysis, linear discriminant analysis, multi-dimensional scaling, cluster evaluation, and correlation analysis, are explained in detail. The advantages of using MSA over conventional techniques also are mentioned. Eventually, the results are compared with the overall performance of MSA on particular land cowl sorts. It's miles concluded that MSA is a dependable technique to land cover mapping with hyperspectral satellite tv for pc pics. Multivariate statistical evaluation on hyperspectral satellite pictures offers an expansion of possibilities to categorize land cowl and resources in mapping numerous capabilities on the Earth. Such techniques consist of linear discriminant evaluation, fundamental aspect evaluation, independent component evaluation, Multivariate selection timber, Kernel Discriminant evaluation, and extra. Those fashions extract extensive statistical features from the pics, permitting more accuracy in detecting functions or classes of land cowl. Many of these techniques can also be integrated with different techniques and tree-primarily based classifiers to refine the land cover type further. Furthermore, these methods may be used along with remotely sensed data, including topographic maps, to provide extra insight into land cover's spatial and temporal characteristics. 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引用次数: 0
摘要
本文分析了利用多变量统计分析(MSA)绘制土地覆被图的高光谱卫星电视(Satellite TV for PC)快照。它介绍了绘制土地覆盖图的方法,以及如何通过 MSA 识别包含特殊土地覆盖信息的组件。事实分析考虑了大地遥感卫星图像事实的可见光、近红外和短波红外光谱。详细介绍了可用于识别土地覆被类型的各种 MSA 技术,如重要事物评价、无偏见方面分析、线性判别分析、多维缩放、聚类分析和相关分析。还提到了使用 MSA 相对于传统技术的优势。最后,比较了 MSA 在特定地表类型上的总体性能。最后得出结论,MSA 是利用高光谱卫星电视进行土地覆被绘图的可靠技术。高光谱卫星图片的多变量统计评估为绘制地球上的多种能力地图提供了更多对土地覆盖和资源进行分类的可能性。这些技术包括线性判别评估、基本面评估、独立分量评估、多变量选择木、核判别评估等。这些方法可以从图片中提取大量的统计特征,从而更准确地检测土地覆盖层的功能或类别。其中许多技术还可以与其他技术和基于树的分类器相结合,进一步完善土地覆被类型。此外,这些方法还可与遥感数据(包括地形图)一起使用,以进一步了解土地覆被的时空特征。简而言之,高光谱卫星电视电脑图像为了解地球表面提供了一个强大的工具,而多元统计方法则大大提高了土地覆被绘图工作的准确性。
Multivariate Statistical Analysis on Hyper Spectral Satellite Images for Land Cover Mapping
This paper analyzes hyperspectral satellite tv for pc snap shots for land cover mapping with multivariate statistical analysis (MSA). It describes the method of mapping land cowl and how the components containing the extraordinary land cowl lessons are recognized via MSA. The analysis of the facts considers the visible, near-infrared, and shortwave infrared spectra of the Landsat image facts. The diverse MSA techniques which might be used for identifying land cover kinds, such as significant thing evaluation, unbiased aspect analysis, linear discriminant analysis, multi-dimensional scaling, cluster evaluation, and correlation analysis, are explained in detail. The advantages of using MSA over conventional techniques also are mentioned. Eventually, the results are compared with the overall performance of MSA on particular land cowl sorts. It's miles concluded that MSA is a dependable technique to land cover mapping with hyperspectral satellite tv for pc pics. Multivariate statistical evaluation on hyperspectral satellite pictures offers an expansion of possibilities to categorize land cowl and resources in mapping numerous capabilities on the Earth. Such techniques consist of linear discriminant evaluation, fundamental aspect evaluation, independent component evaluation, Multivariate selection timber, Kernel Discriminant evaluation, and extra. Those fashions extract extensive statistical features from the pics, permitting more accuracy in detecting functions or classes of land cowl. Many of these techniques can also be integrated with different techniques and tree-primarily based classifiers to refine the land cover type further. Furthermore, these methods may be used along with remotely sensed data, including topographic maps, to provide extra insight into land cover's spatial and temporal characteristics. In precis, hyperspectral satellite tv for pc imagery offers a powerful device for knowledge of the Earth's surface, and multivariate statistical methods substantially enhance the accuracy of land cover mapping efforts.