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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Hybrid Constraints of Pure and Mixed Pixels for Soft-Then-Hard Super-Resolution Mapping With Multiple Shifted Images
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Hybrid Constraints of Pure and Mixed Pixels for Soft-Then-Hard Super-Resolution Mapping With Multiple Shifted Images

机译:具有多个移位图像的软-然后-硬超分辨率映射的纯像素和混合像素的混合约束

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摘要

Multiple shifted images (MSIs) have been widely applied to many super-resolution mapping (SRM) approaches to improve the accuracy of fine-scale land-cover maps. Most SRM methods with MSIs involve two processes: subpixel sharpening and class allocation. Complementary information from the MSIs has been successfully adopted to produce soft attribute values of subpixels during the subpixel sharpening process. Such information, however, is not used in the second process of class allocation. In this paper, a new class-allocation algorithm, named “hybrid constraints of pure and mixed pixels” (HCPMP), is proposed to allocate land-cover classes to subpixels using MSIs. HCPMP first determines the classes of subpixels that overlap with the pure pixels of auxiliary images in MSIs, after which the remaining subpixels are classified using information derived from the mixed pixels of the base image in MSIs. An artificial image and two remote sensing images were used to evaluate the performance of the proposed HCPMP algorithm. The experimental results demonstrate that HCPMP successfully applied MSIs to produce SRM maps that are visually closer to the reference images and that have greater accuracy than five existing class-allocation algorithms. Especially, it can produce more accurate SRM maps for high-resolution land-cover classes than low-resolution cases. The algorithm takes slightly less runtime than class allocation using linear optimization techniques. Hence, HCPMP provides a valuable new solution for class allocation in SRM using auxiliary data from MSIs.
机译:多次平移图像(MSI)已广泛应用于许多超分辨率映射(SRM)方法,以提高精细比例的土地覆盖图的准确性。大多数带有MSI的SRM方法都涉及两个过程:亚像素锐化和类分配。已经成功采用了来自MSI的补充信息,以在子像素锐化过程中产生子像素的软属性值。但是,此类信息不在类分配的第二个过程中使用。本文提出了一种新的类别分配算法,称为“纯像素和混合像素的混合约束”(HCPMP),用于使用MSI将土地覆盖类别分配给子像素。 HCPMP首先确定与MSI中辅助图像的纯像素重叠的子像素的类别,然后使用从MSI中基本图像的混合像素派生的信息对其余子像素进行分类。人工图像和两个遥感图像被用来评估所提出的HCPMP算法的性能。实验结果表明,HCPMP成功地将MSI应用于生成SRM映射,这些映射在视觉上更接近参考图像,并且比五个现有的类分配算法具有更高的准确性。特别是,与低分辨率情况相比,它可以为高分辨率土地覆盖类别生成更准确的SRM地图。与使用线性优化技术的类分配相比,该算法所需的运行时间略少。因此,HCPMP使用来自MSI的辅助数据为SRM中的类分配提供了有价值的新解决方案。

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