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Detecting plague-host abundance from space: Using a spectral vegetation index to identify occupancy of great gerbil burrows

机译:从太空中检测鼠疫宿主的丰度:使用光谱植被指数来识别大型沙鼠洞穴的占有率

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摘要

In Kazakhstan, plague outbreaks occur when its main host, the great gerbil, exceeds an abundance threshold. These live in family groups in burrows, which can be mapped using remote sensing. Occupancy (percentage of burrows occupied) is a good proxy for abundance and hence the possibility of an outbreak. Here we use time series of satellite images to estimate occupancy remotely.In April and September 2013, 872 burrows were identified in the field as either occupied or empty. For satellite images acquired between April and August, ‘burrow objects’ were identified and matched to the field burrows. The burrow objects were represented by 25 different polygon types, then classified (using a majority vote from 10 Random Forests) as occupied or empty, using Normalized Difference Vegetation Indices (NDVI) calculated for all images. Throughout the season NDVI values were higher for empty than for occupied burrows.Occupancy status of individual burrows that were continuously occupied or empty, was classified with producer’s and user’s accuracy values of 63 and 64% for the optimum polygon. Occupancy level was predicted very well and differed 2% from the observed occupancy. This establishes firmly the principle that occupancy can be estimated using satellite images with the potential to predict plague outbreaks over extensive areas with much greater ease and accuracy than previously.
机译:在哈萨克斯坦,当其主要寄主-大型沙鼠超过数量上限时,就会爆发鼠疫。这些人生活在洞穴中的家庭群体中,可以使用遥感进行绘制。占用率(所占洞穴的百分比)是丰度的良好代表,因此很可能爆发。在这里,我们使用卫星图像的时间序列来远程估算占用率.2013年4月和2013年9月,在野外发现了872个挖洞,它们是被占用的还是空的。对于4月至8月之间获取的卫星图像,“洞穴物体”被识别并与野外洞穴匹配。洞穴对象由25种不同的多边形类型表示,然后使用针对所有图像计算的归一化植被指数(NDVI)归类(使用10个随机森林的多数票)为占用或空置。在整个季节中,空洞的NDVI值高于空洞的洞穴。连续空洞或空洞的单个洞穴的居住状态被分类为最佳多边形的生产者和用户准确度值分别为63和64%。预计入住率非常好,与观察到的入住率相差2%。这牢固地确立了一个原理,即可以使用卫星图像来估计占用率,并且有可能比以前更容易,更准确地预测大范围鼠疫的爆发。

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