{"title":"Using Landsat and Sentinel-2 spectral time series to detect East African small woodlots","authors":"Niwaeli E. Kimambo , Volker C. Radeloff","doi":"10.1016/j.srs.2023.100096","DOIUrl":null,"url":null,"abstract":"<div><p>Accurate maps of gains in tree cover are necessary to quantify carbon storage, wildlife habitat, and land use changes. Satellite-based mapping of emerging smallholder woodlots in heterogeneous landscapes of sub-Saharan Africa is challenging. Our goal was to evaluate the use of time series to detect and map small woodlots (<1 ha) in Tanzania. We distinguished woodlots from other land cover types by woodlots' distinct multi-year spectral time series. Woodlots exhibit greening from planting to maturity followed by browning at harvest. We compared two time series approaches: 1) a linear model of Tasseled Cap Wetness (TCW) and other indices, and 2) LandTrendr temporal segmentation metrics. The approaches had equivalent woodlot detection accuracy, but LandTrendr segments had lower accuracy for characterizing woodlot age. We tested the effect of the following factors on woodlot detection and mapping accuracy: the length of the time series (2009–2019), frequency of observations (all Landsat vs. only Landsat-8), spatial resolution (30-m Landsat vs. 10-m Sentinel-2), and woodlot age and size. Woodlot mapping accuracies were higher with longer time series (54% at 3-yrs vs 77% at 7-yrs). The accuracies also improved with more observations, especially when the time series was short (3-yrs Landsat-8 only: 54% vs. all-Landsat: 64%, p-value <0.001). Sentinel-2's higher spatial resolution minimized commission errors even for short time series. Finally, less than half of young and small (<0.4 ha) woodlots were detected, suggesting considerable omission errors in our and other woodlot maps. Our results suggest that the accurate detection of woodlots is possible by analyzing multi-year time series of Landsat and Sentinel-2 data. Given the region's woodlot boom, accurate maps are needed to better quantify woodlots' contribution to carbon sequestration, livelihoods enhancement, and landscape management.</p></div>","PeriodicalId":101147,"journal":{"name":"Science of Remote Sensing","volume":"8 ","pages":"Article 100096"},"PeriodicalIF":5.7000,"publicationDate":"2023-08-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Science of Remote Sensing","FirstCategoryId":"1085","ListUrlMain":"https://www.sciencedirect.com/science/article/pii/S2666017223000214","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"ENVIRONMENTAL SCIENCES","Score":null,"Total":0}
引用次数: 0
Abstract
Accurate maps of gains in tree cover are necessary to quantify carbon storage, wildlife habitat, and land use changes. Satellite-based mapping of emerging smallholder woodlots in heterogeneous landscapes of sub-Saharan Africa is challenging. Our goal was to evaluate the use of time series to detect and map small woodlots (<1 ha) in Tanzania. We distinguished woodlots from other land cover types by woodlots' distinct multi-year spectral time series. Woodlots exhibit greening from planting to maturity followed by browning at harvest. We compared two time series approaches: 1) a linear model of Tasseled Cap Wetness (TCW) and other indices, and 2) LandTrendr temporal segmentation metrics. The approaches had equivalent woodlot detection accuracy, but LandTrendr segments had lower accuracy for characterizing woodlot age. We tested the effect of the following factors on woodlot detection and mapping accuracy: the length of the time series (2009–2019), frequency of observations (all Landsat vs. only Landsat-8), spatial resolution (30-m Landsat vs. 10-m Sentinel-2), and woodlot age and size. Woodlot mapping accuracies were higher with longer time series (54% at 3-yrs vs 77% at 7-yrs). The accuracies also improved with more observations, especially when the time series was short (3-yrs Landsat-8 only: 54% vs. all-Landsat: 64%, p-value <0.001). Sentinel-2's higher spatial resolution minimized commission errors even for short time series. Finally, less than half of young and small (<0.4 ha) woodlots were detected, suggesting considerable omission errors in our and other woodlot maps. Our results suggest that the accurate detection of woodlots is possible by analyzing multi-year time series of Landsat and Sentinel-2 data. Given the region's woodlot boom, accurate maps are needed to better quantify woodlots' contribution to carbon sequestration, livelihoods enhancement, and landscape management.
为了量化碳储量、野生动物栖息地和土地利用变化,准确的树木覆盖率增长地图是必要的。对撒哈拉以南非洲异质景观中新兴的小农户林地进行卫星测绘具有挑战性。我们的目标是评估使用时间序列来探测和绘制坦桑尼亚的小林地(<;1公顷)。我们通过林地不同的多年光谱时间序列将林地与其他土地覆盖类型区分开来。林地从种植到成熟都呈现绿色,然后在收获时呈现褐变。我们比较了两种时间序列方法:1)Tasseled Cap Wetness(TCW)和其他指数的线性模型,以及2)LandTrendr时间分割度量。这些方法具有同等的林地检测精度,但LandTrendr片段在表征林地年龄方面的精度较低。我们测试了以下因素对林地检测和测绘精度的影响:时间序列的长度(2009-2019)、观测频率(所有陆地卫星与仅陆地卫星-8)、空间分辨率(30米陆地卫星与10米哨兵-2)以及林地的年龄和大小。时间序列越长,Woodlot绘图精度越高(3年时为54%,7年时为77%)。随着观测次数的增加,精度也有所提高,尤其是在时间序列较短的情况下(仅3年陆地卫星-8:54%,而所有陆地卫星:64%,p值<;0.001)。Sentinel-2更高的空间分辨率即使在短时间序列中也能最大限度地减少委托误差。最后,检测到的年轻和小型(<;0.4公顷)林地不到一半,这表明我们和其他林地地图存在相当大的遗漏错误。我们的结果表明,通过分析Landsat和Sentinel-2数据的多年时间序列,准确检测林地是可能的。鉴于该地区的林地繁荣,需要准确的地图来更好地量化林地对碳封存、生计改善和景观管理的贡献。