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Land Cover Change Detection Based on Spatial-Temporal Sub-Pixel Evolution Mapping: A Case Study for Urban Expansion

机译:基于空间颞子像素演进映射的土地覆盖变化检测:城市扩张案例研究

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In the past decades, land cover change detection (LCCD) has been dramatically developed, since it provides corroborative support for policy decision, regulatory actions, and subsequent urban-rural activities. Satellite remote sensing image is the major source of LCCD since it is able to revisit the Earth's surface regularly and provide time series images for monitoring and space-time analysis. However, there is always a trade-off between spatial scale and temporal scale, i.e., finer spatial resolution image generally has a lower revisit frequency, leading to an observation omission; while higher revisit frequency image usually has a lower spatial resolution, resulting in a deficiency in detecting finer scale change information. In this paper, a spatial-temporal sub-pixel mapping (SSM) algorithm is proposed on the premise that one pair of fine spatial resolution image with low frequency revisit period and coarse spatial resolution with high frequently revisit period are available, and SSM is taken to restore the coarse image to a finer scale thematic map which can be then compared to the fine image, realizing a frequency and detailed LCCD. SSM is an extension of traditional mono-temporal sub-pixel mapping (SPM) algorithm, and is improved by incorporating temporally fine distribution patterns for a more appropriate restoration of coarse image. A study case for urban expansion LCCD were carried out to verify the ability of the proposed algorithm to handle change detection based on one pair of china-made Gaofen-2 image (GF-2) and Landsat-8 image, the result demonstrate that the proposed SSM algorithm outperform the other traditional SPM, achieving both fine temporal resolution and spatial resolution LCCD for further applications.
机译:在过去的几十年中,土地覆盖变更检测(LCCD)已急剧开发,因为它为政策决策,监管行动和随后的城乡活动提供了核制性支持。卫星遥感图像是LCCD的主要来源,因为它能够定期重新释放地球表面并提供时间序列图像进行监测和时空分析。然而,在空间尺度和时间量表之间总是存在权衡,即,更精细的空间分辨率图像通常具有较低的重址频率,导致观察遗漏;虽然更高的Revisit频率图像通常具有较低的空间分辨率,但导致检测更精细的尺度变化信息的缺陷。在本文中,提出了一种空间子子像素映射(SSM)算法,即有一对具有低频重差周期的一对精细空间分辨率和具有高频繁Revisit时段的粗短空间分辨率,并且拍摄SSM将粗略图像恢复到更精细的刻度主题映射,然后可以与细图像进行比较,实现频率和详细的LCCD。 SSM是传统单颞子像素映射(SPM)算法的扩展,通过结合时间上精细分布图案来改进,以便更合适的粗糙图像恢复。进行了城市扩张LCCD的研究案例,以验证所提出的算法根据一对中国制造的高芬-2图像(GF-2)和Landsat-8图像来处理改变检测的能力,结果表明了提出的SSM算法优于其他传统SPM,实现了微分辨率和空间分辨率LCCD,用于进一步应用。

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