基于多源遥感数据的甘蔗台风灾害定量监测

Lisha Qian, Shuisen Chen, Hao Jiang, Xuemei Dai, Kai Jia
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引用次数: 1

摘要

由于气候变化,特别是农作物倒伏,可预见农业气象灾害的数量将会增加。本文提出了一种创新的监测技术,以探索多源遥感数据的应用潜力。基于sentinel-1时间序列数据提取的甘蔗种植面积,结合Landsat-8和sentinel-2超强台风“天鹰”前后的MSI影像,提出了植被指数距离平准化方法,并将其应用于广州市南沙区大港镇甘蔗宿苗的评价。该地区于2017年8月23日受强风和暴雨影响。验证结果表明,多时相Sentinel-1影像数据能够有效提取倒伏前后甘蔗种植面积,提取精度达到87.83%。与其他植被指数(RVI/LSWI/NBR/EVI/DVI)相比,NDVI对甘蔗倒伏的响应最为敏感。提取耕地损害程度的验证精度达71.64%,其中甘蔗受灾面积达711.33 ha。研究进一步说明了影像植被指数差值法在区域尺度上监测甘蔗倒伏程度的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantitative monitoring of sugarcane typhoon disaster based on multi-source remote sensing data
With a foreseen increase in the number of agrometeorological disasters due to climate change, especially in the field of crop lodging. This paper presented an innovative monitoring technique to explore the application potential of muti-source remote sensing data. Based on the sugarcane planting area extracted from sentinel-1 time-series data and combination of Landsat-8 and sentinel-2 MSI images before and after Super Typhoon Hato, a vegetation index distance leveling method was come out and then was applied to assess the sugarcane lodging in Dagang Town, Nansha District, Guangzhou City. The region was caused by strong wind and rainstorm on August 23, 2017. The validation results showed that the multi-temporal Sentinel-1 image data can effectively extract the sugarcane planted area before and after lodging with an accuracy of 87.83%. Compared with other vegetation indices (RVI/LSWI/NBR/EVI/DVI), NDVI was the most sensitive in response to sugarcane lodging. The validation accuracy of extracting farmland damage extent reached 71.64%, among them, the affected area of sugarcane reached 711.33 ha. The study further illustrates the capability of the image vegetation index difference method on monitoring of sugarcane lodging degree at the reginal scale.
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