Broad-area-search of new construction using time series analysis of Landsat and Sentinel-2 data

IF 5.7 Q1 ENVIRONMENTAL SCIENCES Science of Remote Sensing Pub Date : 2024-05-19 DOI:10.1016/j.srs.2024.100138
Xiaojing Tang , Madison G. Barrett , Kangjoon Cho , Kelsee H. Bratley , Katelyn Tarrio , Yingtong Zhang , Hanfeng Gu , Peter Rasmussen , Marc Bosch , Curtis E. Woodcock
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Abstract

New construction activities can alter surface albedo and structure, which then affect surface temperature and roughness, and hence have a significant impact on urban climate. Construction activity is also an important indicator of human development and movement and is of high interest to the intelligence community. A new approach for Broad-Area-Search of New Construction activities (BASC) by combining time series analysis and rule-based filters using Landsat data was developed and tested in five selected cities (Boston, Shanghai, São Paulo, Dubai, and Ho Chi Minh City). The algorithm transforms Landsat images into fractions of a set of four endmembers using Linear Spectral Mixture Analysis (LSMA) and then applies the Continuous Change Detection and Classification (CCDC) algorithm for change detection. A set of rule-based filters and spatial processing was then applied to narrow the search to changes related to construction activities. Overall, BASC reached a recall of 0.83, a precision of 0.58, and an F1-Score of 0.68. Among the five cities, Dubai had the highest recall of 1.0 and the highest F1-score of 0.75, while Boston had the highest precision of 0.63. BASC performed worst in Shanghai with an F1-Score of 0.6, mainly due to it having the lowest recall of 0.62, while São Paulo has the lowest precision of 0.5. Common sources of omission errors include low-density, redevelopment, and small sites, while common commission errors include roofing, land clearing, water level changes, and re-surfacing projects. For comparison, BASC using Sentinel-2 Top-of-Atmosphere (TOA) Reflectance data recorded an overall F1-Score of 0.63, but with higher recall and lower precision. Integration of Sentinel-2 Surface Reflectance and Sentinel-1 SAR data has the potential to further improve the performance of BASC. The new algorithm provided a method for routine monitoring of construction activities over large areas. The result of such monitoring can be used as a baseline to narrow down the candidate targets of construction activities, where very high-resolution imagery can then be requested to perform further examination.

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利用大地遥感卫星和哨兵-2 数据的时间序列分析对新建筑进行大范围搜索
新的建筑活动会改变地表反照率和结构,进而影响地表温度和粗糙度,从而对城市气候产生重大影响。建筑活动也是人类发展和移动的一个重要指标,受到情报界的高度关注。利用大地遥感卫星数据,结合时间序列分析和基于规则的过滤器,开发了一种新的广域新建筑活动搜索(BASC)方法,并在五个选定城市(波士顿、上海、圣保罗、迪拜和胡志明市)进行了测试。该算法利用线性光谱混杂分析法(LSMA)将大地遥感卫星图像转换成一组四个内成员的分数,然后应用连续变化检测和分类算法(CCDC)进行变化检测。然后应用一套基于规则的过滤器和空间处理,将搜索范围缩小到与建筑活动有关的变化。总体而言,BASC 的召回率为 0.83,精确度为 0.58,F1 分数为 0.68。在五个城市中,迪拜的召回率最高,为 1.0,F1 分数最高,为 0.75,而波士顿的精确度最高,为 0.63。BASC 在上海的表现最差,F1 分数为 0.6,这主要是因为上海的召回率最低,仅为 0.62,而圣保罗的精确度最低,仅为 0.5。常见的遗漏错误包括低密度、重建和小地块,而常见的委托错误包括屋顶、土地清理、水位变化和重铺路面项目。相比之下,BASC 使用哨兵 2 号大气顶部 (TOA) 反射率数据记录的总体 F1 分数为 0.63,但召回率较高,精度较低。将哨兵-2 表面反射率和哨兵-1合成孔径雷达数据整合在一起,有可能进一步提高 BASC 的性能。新算法为大面积施工活动的常规监测提供了一种方法。这种监测的结果可用作缩小施工活动候选目标范围的基线,然后可要求提供非常高分辨率的图像以进行进一步检查。
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