Wavelet-curvelet-contourlet based remote sensing data mining model

B. Bhosale
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Abstract

: Remote sensing applications such as change detection, multispectral classification, environment monitoring, image mosaicking, weather forecasting, super resolution images and integrating information into geographic information system (GIS), image registration is a required process. Such natural images contain intrinsic geometrical structures that form the key features in visual information. Satellite data thus delivered/received in the form signals/images have a wide coverage with multi-temporal and multispectral capabilities. In such problems, a prime objective is to improve the quality of transmitted signals/images composed of desired signal plus additive random/Gaussian noise, by employing efficient feature extraction and denoising techniques with efficient representation of visual information. The experimental results and performance factor analysis based on of each of the multiresolution transforms show that contourlet transform produces relatively better result in terms of capturing directional information, reconstruction, noise restraints. The modelling and simulation: The feature extraction and denoising process is aimed at removing the noise with the help of a matched filter (either using wavelet, curvelet or contourlet), and is composed of three major steps viz. Decomposition of the transmitted signal, Thresholding to demise noisy elements, and Reconstruction of the processed signal. Signal is represented as
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基于小波曲线轮廓波的遥感数据挖掘模型
遥感应用,如变化检测、多光谱分类、环境监测、图像拼接、天气预报、超分辨率图像以及将信息集成到地理信息系统(GIS)中,图像配准是一个必需的过程。这些自然图像包含内在的几何结构,这些几何结构构成了视觉信息的关键特征。因此,以信号/图像形式传送/接收的卫星数据具有多时间和多光谱能力,覆盖范围广。在这些问题中,主要目标是通过采用有效的特征提取和去噪技术,有效地表示视觉信息,提高由期望信号加上加性随机/高斯噪声组成的传输信号/图像的质量。实验结果和基于每种多分辨率变换的性能因子分析表明,contourlet变换在捕获方向信息、重建和抑制噪声方面具有较好的效果。建模与仿真:特征提取与去噪过程的目的是借助匹配的滤波器(小波、曲波或轮廓波)去除噪声,主要由三个步骤组成:对传输信号进行分解,对噪声元素进行阈值处理,对处理后的信号进行重建。信号表示为
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