NDVI COMPUTATION OF LISS III IMAGES USING QGIS

Vijayalakshmi, D. Kumar, S. Kumar, P. Thejaswini
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引用次数: 0

Abstract

Feature Selection and Extraction is a very significant and mandatory part in the domain of image processing. After the relevant preprocessing operations, the relevant features have to be extracted using suitable algorithms. In multispectral imagery, the features are identified and extracted  based on the applications and objectives of the analysis such as color, texture, brightness, intensity etc. Some of the prominent algorithms used for feature extraction are mean shift algorithm, Principal Component transformation, Wavelet based Transformation, Local Binary Patterns etc. Texture based feature detection and extraction is the most prominent method adopted which involves multispectral images.  With respect to hyperspectral images, dimensionality is a critical issue to be dealt appropriately.
利用qgis计算liss图像的Ndvi
特征选择与提取是图像处理领域中一个非常重要和必不可少的部分。经过相关的预处理操作后,需要使用合适的算法提取相关的特征。在多光谱图像中,根据分析的用途和目标,如颜色、纹理、亮度、强度等特征进行识别和提取。用于特征提取的主要算法有均值移位算法、主成分变换、小波变换、局部二值模式等。基于纹理的特征检测与提取是目前采用的最主要的方法,它涉及到多光谱图像。对于高光谱图像,维数是一个需要适当处理的关键问题。
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来源期刊
Information Technology in Industry
Information Technology in Industry COMPUTER SCIENCE, SOFTWARE ENGINEERING-
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