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DEVELOPMENT OF TIME-SERIES HUMAN SETTLEMENT MAPPING SYSTEM USING HISTORICAL LANDSAT ARCHIVE

机译:利用历史山地档案开发时间序列人类沉降映射系统

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Methodology of automated human settlement mapping is highly needed for utilization of historical satellite data archives for urgent issues of urban growth in global scale, such as disaster risk management, public health, food security, and urban management. As development of global data with spatial resolution of 10-100 m was achieved by some initiatives using ASTER, Landsat, and TerraSAR-X, next goal has targeted to development of time-series data which can contribute to studies urban development with background context of socioeconomy, disaster risk management, public health, transport and other development issues. We developed an automated algorithm to detect human settlement by classification of built-up and non-built-up in time-series Landsat images. A machine learning algorithm, Local and Global Consistency (LLGC), was applied with improvements for remote sensing data. The algorithm enables to use MCD12Q1, a MODIS-based global land cover map with 500-m resolution, as training data so that any manual process is not required for preparation of training data. In addition, we designed the method to composite multiple results of LLGC into a single output to reduce uncertainty. The LLGC results has a confidence value ranging 0.0 to 1.0 representing probability of built-up and non-built-up. The median value of the confidence for a certain period around a target time was expected to be a robust output of confidence to identify built-up or non-built-up areas against uncertainties in satellite data quality, such as cloud and haze contamination. Four scenes of Landsat data for each target years, 1990, 2000, 2005, and 2010, were chosen among the Landsat archive data with cloud contamination less than 20%. We developed a system with the algorithms on the Data Integration and Analysis System (DIAS) in the University of Tokyo and processed 5200 scenes of Landsat data for cities with more than one million people worldwide.
机译:自动化的人居制图方法是非常需要在全球范围内城市发展的紧迫问题,如灾害风险管理,公共卫生,粮食安全,城市管理的历史卫星数据档案的开发利用。作为一个拥有10-100米,通过使用ASTER,陆地卫星和TerraSAR-X卫星的一些举措实现空间分辨率的全球数据的发展,下一个目标有针对性地时间序列数据的开发可与背景方面有助于研究城市发展社会经济,灾害风险管理,公共卫生,交通和其他发展问题。我们开发了一个自动算法来检测由分类人类住区建成和未建成的时间序列陆地卫星图像。的机器学习算法,本地和全局一致性(LLGC),用改进的遥感数据应用。该算法使得能够使用MCD12Q1,基于MODIS-全球土地覆盖地图500米的分辨率,作为训练数据,使得任何手动过程不需要准备的训练数据。此外,我们设计了方法LLGC的复合多个结果为单个输出,以减少不确定性。该LLGC结果具有置信度值的范围在0.0到1.0表示概率建成和非建成。信心对周围的目标在一定时间内的中值预期为信心,以确定一个强大的输出建成或反对卫星数据质量的不确定性,比如云和霾污染非建成区。四个场景陆地卫星数据的每一个目标年,1990年,2000年,2005年,和2010年,被选为之间的陆地卫星与云污染归档数据低于20%。我们开发了一个系统的数据集成和东京大学分析系统(DIAS)的算法和处理陆地卫星数据的5200个场景,在全球拥有超过一百万人口的城市。

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