利用深度学习技术对商业林分中狒狒的损害进行树级分析

Regardt Ferreira, Kabir Peerbhay, Josua Louw, Ilaria Germishuizen, Andrew Morris, Romano Lottering
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摘要

【摘要】南非的商业人工林是一种同质的单一栽培品种,种植高度繁殖的外来物种,以提供最好的潜在质量的木材产品。因此,这些林分容易受到生物和非生物因素的不利影响,因此需要加强管理以减轻这些风险。需要一个可持续的森林监测系统,能够检测这些人工林生理状态的实时变化,以便及时进行管理干预,以减少损失。机器学习算法的使用最近变得流行起来,取得了可接受的成功。本研究探讨了深度学习神经网络在常绿松林狒狒危害的早期检测中的应用。利用由多颗Dove纳米卫星星座捕获的PlanetScope图像(光谱波段590-860 nm),每天可获得3 m空间分辨率的高时间分辨率,利用深度神经网络实现了81.54%的总体精度,kappa值为0.69。相比之下,使用随机森林分类器产生了74.04%的准确率和0.62的kappa值。这项研究成功地绘制了商业松林中狒狒对不同程度的破坏。我们为日常监测计划提供了一种可重复的方法,并证明了PlanetScope等高分辨率图像在树级绘制健康和损害严重程度的实用性。关键词:常绿森林,森林扰动监测,行星望远镜图像,实时探测,遥感,南非
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A tree-level analysis of baboon damage in commercial forest stands using deep learning techniques
AbstractCommercial forest plantations in South Africa are homogeneous monocultures of highly bred exotic species grown to deliver timber products of the best potential quality. As such, these stands are susceptible to adverse effects of biotic and abiotic factors, and therefore require intense management to mitigate these risks. A sustainable forest monitoring system that can detect real-time changes in the physiological state of these plantations is needed for timeous management intervention to reduce losses. The use of machine learning algorithms has recently become popular, with acceptable levels of success. This study explores the application of deep learning neural networks for early detection of damage caused by baboons in evergreen plantations of Pinus species. Using PlanetScope imagery (spectral band 590–860 nm), which is captured by a constellation of Dove nanosatellites, with a high temporal resolution available daily at 3 m spatial resolution, the study achieved an overall accuracy of 81.54%, with a kappa value of 0.69, using a deep neural network. In comparison, using a random-forest classifier produced 74.04% accuracy and a kappa value of 0.62. The study successfully mapped different levels of baboon damage within commercial pine forests. We provide a repeatable method for daily monitoring initiatives, and attest to the utility of higher-resolution imagery such as PlanetScope for mapping health and damage severity at the tree level.Keywords: evergreen forestforest disturbancemonitoringPlanetScope imageryreal-time detectionremote sensingSouth Africa
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