首页> 外文期刊>Emerging Topics in Computing, IEEE Transactions on >Estimating the Statistical Characteristics of Remote Sensing Big Data in the Wavelet Transform Domain
【24h】

Estimating the Statistical Characteristics of Remote Sensing Big Data in the Wavelet Transform Domain

机译:小波变换域中遥感大数据统计特征的估计

获取原文
获取原文并翻译 | 示例
           

摘要

Since it is difficult to deal with big data using traditional models and algorithms, predicting and estimating the characteristics of big data is very important. Remote sensing big data consist of many large-scale images that are extremely complex in terms of their structural, spectral, and textual features. Based on multiresolution analysis theory, most of the natural images are sparse and have obvious clustering and persistence characters when they are transformed into another domain by a group of basic special functions. In this paper, we use a wavelet transform to represent remote sensing big data that are large scale in the space domain, correlated in the spectral domain, and continuous in the time domain. We decompose the big data set into approximate multiscale detail coefficients based on a wavelet transform. In order to determine whether the density function of wavelet coefficients in a big data set are peaky at zero and have a heavy tailed shape, a two-component Gaussian mixture model (GMM) is employed. For the first time, we use the expectation-maximization likelihood method to estimate the model parameters for the remote sensing big data set in the wavelet domain. The variance of the GMM with changing of bands, time, and scale are comprehensively analyzed. The statistical characteristics of different textures are also compared. We find that the cluster characteristics of the wavelet coefficients are still obvious in the remote sensing big data set for different bands and different scales. However, it is not always precise when we model the long-term sequence data set using the GMM. We also found that the scale features of different textures for the big data set are obviously reflected in the probability density function and GMM parameters of the wavelet coefficients.
机译:由于使用传统的模型和算法很难处理大数据,因此预测和估计大数据的特性非常重要。遥感大数据由许多大型图像组成,这些图像在结构,频谱和文本特征方面极为复杂。基于多分辨率分析理论,大多数自然图像是稀疏的,当通过一组基本的特殊功能将其转换到另一个域时,它们具有明显的聚类和持久性特征。在本文中,我们使用小波变换来表示遥感大数据,这些大数据在空间域中是大规模的,在光谱域中是相关的,在时域中是连续的。我们基于小波变换将大数据集分解为近似的多尺度细节系数。为了确定大数据集中的小波系数的密度函数是否在零处达到峰值并具有重尾形状,采用了两分量高斯混合模型(GMM)。首次,我们使用期望最大化似然法来估计小波域中遥感大数据集的模型参数。全面分析了GMM随频带,时间和规模的变化。还比较了不同纹理的统计特征。我们发现,在不同波段,不同尺度的遥感大数据集中,小波系数的聚类特征仍然很明显。但是,当我们使用GMM建模长期序列数据集时,并不总是那么精确。我们还发现,针对大数据集的不同纹理的尺度特征明显反映在小波系数的概率密度函数和GMM参数上。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号