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Remote mapping of foodscapes using sUAS and a low cost BG-NIR sensor updates

机译:使用sUAS和低成本的BG-NIR传感器更新来远程绘制食物景观

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The assessment of landscape condition for large herbivores, also known as foodscapes, is fast gaining interest in conservation and landscape management programs worldwide. Although traditional approaches are now being replaced by satellite imagery, several technical issues still need to be addressed before full standardization of remote sensing methods for these purposes. We present a low-cost method, based on the use of a modified blue/ greenear-infrared (BG-NIR) camera housed on a small-Unmanned Aircraft System (sUAS), to create foodscapes for a generalist Mediterranean ungulate: the Iberian Ibex (Capra pyrenaica) in Northeast Spain. Faecal cuticle micro-histological analyses were used to assess the dietary preferences of ibexes and then individuals of the most common plant species (n = 19) were georeferenced to use as test samples. Because of the seasonal pattern in vegetation activity, based on the NDVI (Smooth term _(Month) = 21.5, p-value < .01, R~2 = 43%, from a GAM), images were recorded in winter and spring to represent contrasting vegetation phenology using two flight heights above ground level (30 and 60 m). Additionally, the range of image pixel sizes was 3.5-30 cm with the smallest pixel size representing the highest resolution. Boosted Trees were used to classify plant taxa based on spectral reflectance and create a foodscape of the study area. The number of target species, the sampling season, the height of flight and the image resolution were analysed to determine the accuracy of mapping the foodscape. The highest classification error (70.66%) was present when classifying all plant species using a 30 cm pixel size from acquisitions at 30 m height. The lowest error (18.7%), however, was present when predicting plants preferred by ibexes, at 3.5 cm pixel size acquired at 60 m height. This methodology can help to successfully monitor food availability and seasonally and to identify individual species.
机译:大型草食动物(也称为食物景观)的景观状况评估正在迅速引起全球保护和景观管理计划的关注。尽管现在用卫星图像代替了传统方法,但是在为这些目的对遥感方法进行完全标准化之前,仍然需要解决一些技术问题。我们提供了一种低成本的方法,该方法基于使用安装在小型无人飞机系统(sUAS)上的改良的蓝/绿/近红外(BG-NIR)相机,为通才的地中海有蹄类动物创建食景:伊比利亚高地山羊(Capra pyrenaica)在东北西班牙。粪便表皮显微组织学分析用于评估高地山羊的饮食偏好,然后地理定位最常见植物物种(n = 19)的个体作为测试样品。由于植被活动的季节性模式,基于NDVI(平滑项_(Month)= 21.5,p值<.01,R〜2 = 43%,来自GAM),记录了冬季和春季至代表使用高于地面两个高度(30和60 m)的对比植被物候。此外,图像像素大小范围为3.5-30厘米,最小像素大小代表最高分辨率。增强树用于根据光谱反射率对植物分类群进行分类,并创建研究区域的美食景象。分析目标物种的数量,采样季节,飞行高度和图像分辨率,以确定绘制食物景图的准确性。使用30 m高度采集的30 cm像素大小对所有植物物种进行分类时,存在最高的分类误差(70.66%)。但是,当预测高地山羊所喜欢的植物时,在60 m高度处获得的3.5 cm像素大小处的误差最低(18.7%)。这种方法可以帮助成功地监测食物供应和季节性,并确定单个物种。

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