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Subpixel mapping on remote sensing imagery using a prediction model combining wavelet transform and radial basis function neural network

机译:小波变换与径向基函数神经网络相结合的预测模型在遥感影像上的亚像素映射

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Soft classification methods can be used for mixed-pixel classification on remote sensing imagery by estimating different land cover class fractions of every pixel. However, the spatial distribution and location of these class components within the pixel remain unknown. To map land cover at subpixel scale and increase the spatial resolution of land cover classification maps, in this paper, a prediction model combining wavelet transform and Radial Basis Functions (RBF) neural network, abbreviated as Wavelet-RBFNN, is constructed by predicting high-frequency wavelet coefficients from low-frequency coefficients at the same resolution with RBF network and taking wavelet coefficients at coarser resolution as training samples. According to different land cover class fraction images obtained from mixed-pixel classification, based on the assumption of neighborhood dependence of wavelet coefficients, subpixel mapping on remote sensing imagery can be accomplished through two steps, i.e., prediction of land cover class compositions within subpixels and hard classification. The experimental results obtained with artificial images, QuickBird image and Landsat 7 ETM+ image indicate that the subpixel mapping method proposed in this paper can successfully produce super-resolution land cover classification maps from remote sensing imagery, outperforming cubic B-spline and Kriging interpolation method in visual effect and prediction accuracy. The Wavelet-RBFNN model can also be applied to simulate higher spatial resolution image, and automatically identify and locate land cover targets at the subpixel scales, when the cost and availability of high resolution imagery prohibit its use in many areas of work.
机译:通过估算每个像素的不同土地覆盖率,可以将软分类方法用于遥感影像的混合像素分类。但是,这些类成分在像素内的空间分布和位置仍然未知。为了在亚像素尺度上绘制土地覆被并提高土地覆被分类图的空间分辨率,本文通过对小波变换进行预测,构造了一种将小波变换和径向基函数神经网络(RBF)相结合的预测模型,简称为Wavelet-RBFNN。频率小波系数来自与RBF网络具有相同分辨率的低频系数,并以较粗分辨率的小波系数作为训练样本。根据混合像素分类获得的不同土地覆盖类别分数图像,基于小波系数邻域相关性的假设,可以通过两步来完成亚像素在遥感影像上的映射,即预测子像素内的土地覆盖类别组成和硬分类。人工图像,QuickBird图像和Landsat 7 ETM +图像的实验结果表明,本文提出的亚像素映射方法可以成功地从遥感图像生成超分辨率土地覆盖分类图,优于三次B样条和Kriging插值方法。视觉效果和预测准确性。当高分辨率图像的成本和可用性禁止其在许多工作领域使用时,Wavelet-RBFNN模型还可以用于模拟更高空间分辨率的图像,并以亚像素为单位自动识别和定位土地覆盖目标。

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