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Adaptive MAP sub-pixel mapping model based on regularization curve for multiple shifted hyperspectral imagery

机译:基于正则化曲线的多位移高光谱图像自适应MAP亚像素映射模型

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Sub-pixel mapping is a promising technique for producing a spatial distribution map of different categories at the sub-pixel scale by using the fractional abundance image as the input. The traditional sub-pixel mapping algorithms based on single images often have uncertainty due to insufficient constraint of the sub-pixel land-cover patterns within the low-resolution pixels. To improve the sub-pixel mapping accuracy, sub-pixel mapping algorithms based on auxiliary datasets, e.g., multiple shifted images, have been designed, and the maximum a posteriori (MAP) model has been successfully applied to solve the ill-posed sub-pixel mapping problem. However, the regularization parameter is difficult to set properly. In this paper, to avoid a manually defined regularization parameter, and to utilize the complementary information, a novel adaptive MAP sub-pixel mapping model based on regularization curve, namely AMMSSM, is proposed for hyperspectral remote sensing imagery. In AMMSSM, a regularization curve which includes an L-curve or U-curve method is utilized to adaptively select the regularization parameter. In addition, to take the influence of the sub-pixel spatial information into account, three class determination strategies based on a spatial attraction model, a class determination strategy, and a winner-takes-all method are utilized to obtain the final sub-pixel mapping result. The proposed method was applied to three synthetic images and one real hyperspectral image. The experimental results confirm that the AMMSSM algorithm is an effective option for sub-pixel mapping, compared with the traditional sub-pixel mapping method based on a single image and the latest sub-pixel mapping methods based on multiple shifted images.
机译:子像素映射是一种有前途的技术,可以通过使用分数丰度图像作为输入来在子像素尺度上生成不同类别的空间分布图。传统的基于单个图像的子像素映射算法由于对低分辨率像素内的子像素陆地覆盖图案的约束不足而常常具有不确定性。为了提高子像素映射的准确性,已经设计了基于辅助数据集(例如,多个移位图像)的子像素映射算法,并且最大后验(MAP)模型已成功应用于解决不适定子图像。像素映射问题。但是,很难正确设置正则化参数。为了避免人工定义的正则化参数,并利用互补信息,提出了一种基于正则化曲线的自适应MAP子像素映射模型,即AMMSSM,用于高光谱遥感影像。在AMMSSM中,使用包含L曲线或U曲线方法的正则化曲线来自适应地选择正则化参数。另外,为了考虑子像素空间信息的影响,利用基于空间吸引力模型的三种类别确定策略,类别确定策略和赢家通吃方法来获得最终的子像素。映射结果。该方法被应用于三幅合成图像和一幅真实的高光谱图像。实验结果证明,与传统的基于单幅图​​像的子像素映射方法和基于多幅移位图像的最新子像素映射方法相比,AMMSSM算法是一种有效的亚像素映射方法。

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