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Hugo Jantzi, Claire Marais-Sicre, Eric Maire, Hugues Barcet, S. Guillerme
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Abstract

The rapid spread of invasive plant species (IPS) over several decades has led to numerous impacts on biodiversity, landscape and human activities. Early detection and knowledge on their spatiotemporal distribution is crucial to better understand invasion patterns and conduct appropriate activities for landscape management. Therefore, remote sensing provides great potential for detecting and mapping the spatial spread of IPS. The study presents a mapping of IPS (Reynoutria japonica and Impatiens glandulifera) over the last decade, on two sites located in the central Pyrenees in the southwest of France, from very high resolution RGB aerial photographs. A supervised classification based on the random forest algorithm was performed using pixel attributes. The original spectral bands (RGB) were used, to which vegetation indices and textures were added to improve the detection. The classification models yielded a mean prediction accuracy (F-score) of 0.90 (0.87 to 0.92) at the site 1 and 0.87 (0.81 to 0.91) at the site 2. Results show that the expansion of IPS is closely related to the presence of corridors (e.g., roads, power lines) and to environments disturbed by human activity such as land clearing.
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近几十年来,入侵植物的快速传播对生物多样性、景观和人类活动产生了诸多影响。早期发现和了解它们的时空分布对更好地了解入侵模式和开展适当的景观管理活动至关重要。因此,遥感对IPS的空间分布进行探测和制图具有很大的潜力。该研究展示了过去十年来法国西南部比利牛斯山脉中部两个地点的IPS (Reynoutria japonica和Impatiens glandulifera)的地图,这些地图来自非常高分辨率的RGB航空照片。利用像素属性进行基于随机森林算法的监督分类。利用原始光谱带(RGB),在原始光谱带上加入植被指数和纹理以提高检测效果。分类模型在站点1和站点2的平均预测精度分别为0.90(0.87 ~ 0.92)和0.87(0.81 ~ 0.91)。结果表明,入侵入侵的扩展与通道(如道路、电力线)的存在以及受人类活动干扰的环境(如土地清理)密切相关。
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