AN INGENIOUS TEXTURE AND SHAPE FEATURE EXTRACTION IN REMOTE SENSING IMAGES BY MEANS OF MULTI KERNEL PRINCIPAL COMPONENT ANALYSIS WITH PYRAMIDAL WAVELET TRANSFORM AND CANNY EDGE DETECTION METHOD

N. Balakumar, K. Ragul
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Abstract

In the rapid growth of the digital world, the dealing of remote sensing image is increased day to day in context with the extraction of information. The feature extractions had been an exigent part among the research to classify the remote sensing images for legitimate information reclamation. In such context this paper focus on the extraction of information from remote sensing images by means of classification of spectral classes. Texture and shape is one of the important features in computer vision for many applications. Most of the attention has been focused on texture features with window selection and noise models. This problem can be overcome through Multi Kernel Principal Component analysis with pyramidal wavelet transform and canny edge detection method for extracting feature in high resolute images based on texture and shape. In this paper, proposed Multi Kernel Principal Component analysis utilizes to extract common information and specify common sets of features for further process and reduces dimensionality. Pyramidal wavelet transform is used to extract texture perception for visual interpretation and it decomposes the images into number of descriptors. So texture can be extracted in an image with tree-structured wavelet. Finally, an edge detection technique identifies the boundary regions from the classified remote sensing image, which is taken as shape feature extraction. The performance of this proposed work is measured through peak signal to noise ratio, Execution time, Kappa analysis and structural similarity for a various remote sensing dataset images.
利用锥体小波变换的多核主成分分析和精细边缘检测方法,巧妙地提取了遥感图像的纹理和形状特征
随着数字世界的快速发展,遥感图像的处理日益增加,信息的提取也越来越多。遥感图像的特征提取是遥感图像分类和合理信息回收研究中一个迫切需要解决的问题。在此背景下,本文主要研究了利用光谱分类的方法从遥感影像中提取信息。纹理和形状是计算机视觉中许多应用的重要特征之一。大多数的注意力都集中在纹理特征的窗口选择和噪声模型上。采用锥体小波变换的多核主成分分析和基于纹理和形状的精细边缘检测方法对高分辨率图像进行特征提取,可以克服这一问题。本文提出的多核主成分分析利用提取共同信息和指定共同特征集来进一步处理,并降低维数。采用锥体小波变换提取纹理感知,并将图像分解为多个描述子进行视觉判读。因此,用树状小波可以提取图像的纹理。最后,利用边缘检测技术从分类后的遥感图像中识别出边界区域,作为形状特征提取。通过对不同遥感数据集图像的峰值信噪比、执行时间、Kappa分析和结构相似性来衡量本文提出的工作的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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