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首页> 外文期刊>Journal of Applied Remote Sensing >Subpixel land cover change mapping with multitemporal remote-sensed images at different resolution
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Subpixel land cover change mapping with multitemporal remote-sensed images at different resolution

机译:具有不同分辨率的多时相遥感图像的亚像素土地覆盖变化映射

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Due to the lack of support for a high-resolution image in a short time, land cover change detection is always applied on the multitemporal remote-sensed images with different resolutions. The coarse-resolution image contains a large number of mixed pixels, which can seriously limit the utility of the change detection. Soft classification (SC) can be applied to improve this situation through deriving the abundances and generating the fractional change map, but it cannot provide the spatial distribution of the subpixels. Subpixel mapping (SPM) is a potential solution to resolve this problem, and is designed to use the proportions to obtain a sharpened thematic map at a subpixel scale. Based on this thought, the subpixel scale land cover change mapping result can be realized by integrating these two key techniques. However, in practice, there is a serious limitation to the detail and accuracy of the result, because when the scale factor between the different resolution images is large, the subpixel configuration is complex and the data volumes will be amplified. Moreover, with the high proportion of the changed area in the whole image, the change detection process at the subpixel level gets more difficult. The SPM technique is generally performed based only on the abundances of each and the spatial dependence assumption, so it cannot satisfy the demand. In order to overcome this shortcoming, several new reasonable subpixel scale change detection rules are defined in this paper, which dictate the land cover change map must be constructed according to the existing high-resolution image. The output from SC and prior information of the subpixel feature arrangement is applied into a modified cellular automata (CA) model, which can be regarded as a more reasonable tool to monitor the subpixel changes to resolve the big-data problem. Two experiments are performed and the results prove that the proposed method can effectively improve the accuracy of the change detection maps of the spatial distribution in a subpixel scale. (C) 2015 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:由于在短时间内缺乏对高分辨率图像的支持,土地覆盖变化检测始终应用于具有不同分辨率的多时相遥感图像。粗分辨率图像包含大量混合像素,这会严重限制更改检测的效用。可以应用软分类(SC)通过得出丰度并生成分数变化图来改善这种情况,但是它不能提供子像素的空间分布。子像素映射(SPM)是解决此问题的一种潜在解决方案,旨在使用这些比例在子像素尺度上获得清晰的主题图。基于这一思想,可以通过整合这两个关键技术来实现亚像素尺度的土地覆盖变化映射结果。然而,实际上,对结果的细节和准确性存在严重的限制,因为当不同分辨率图像之间的比例因子较大时,子像素配置会很复杂,并且数据量将被放大。此外,在整个图像中变化区域的比例很高时,子像素级的变化检测过程变得更加困难。 SPM技术通常仅基于每个的丰度和空间依赖性假设来执行,因此它不能满足需求。为了克服这个缺点,本文定义了几种新的合理的亚像素尺度变化检测规则,这些规则规定必须根据现有的高分辨率图像构建土地覆盖变化图。来自SC的输出和子像素特征排列的先验信息被应用到改进的元胞自动机(CA)模型中,该模型可以被视为监视子像素变化以解决大数据问题的更合理工具。进行了两个实验,结果证明了该方法可以有效提高亚像素尺度空间分布变化检测图的准确性。 (C)2015年光电仪器工程师协会(SPIE)

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