Forest biomass is a key influence for future climate, and the world urgently needs highly scalable financing schemes, such as carbon offsetting certifications, to protect and restore forests. Current manual forest carbon stock inventory methods of measuring single trees by hand are time, labour, and cost-intensive and have been shown to be subjective. They can lead to substantial overestimation of the carbon stock and ultimately distrust in forest financing. The potential for impact and scale of leveraging advancements in machine learning and remote sensing technologies is promising but needs to be of high quality in order to replace the current forest stock protocols for certifications. In this paper, we present ReforesTree, a benchmark dataset of forest carbon stock in six agro-forestry carbon offsetting sites in Ecuador. Furthermore, we show that a deep learning-based end-to-end model using individual tree detection from low cost RGB-only drone imagery is accurately estimating forest carbon stock within official carbon offsetting certification standards. Additionally, our baseline CNN model outperforms state-of-the-art satellite-based forest biomass and carbon stock estimates for this type of small-scale, tropical agro-forestry sites. We present this dataset to encourage machine learning research in this area to increase accountability and transparency of monitoring, verification and reporting (MVR) in carbon offsetting projects, as well as scaling global reforestation financing through accurate remote sensing.
翻译:森林生物量是未来气候的一个关键影响,世界迫切需要高度可扩展的融资计划,如碳抵消认证,以保护和恢复森林。目前人工森林碳存量库存清单方法,手工测量单树是时间、劳动和成本密集型的,并且已经证明是主观的。它们可能导致对碳储量的重大高估,最终不信任森林融资。利用机械学习和遥感技术进步的影响和规模的潜力是大有希望的,但为了取代目前的森林存量认证协议,世界需要高质量的融资计划。在本文件中,我们介绍了ReforesTree,这是厄瓜多尔六个农林业碳抵消地点森林碳储量的基准数据集。此外,我们表明,利用低成本RGB专用无人机图像的个体树检测,基于深层次学习的端对端模型正在准确地估计官方碳抵消认证标准范围内的森林碳储量。此外,我们的有线网络网络基线模型超越了目前以卫星为基础的森林储量和碳储量标准,以取代当前的森林储量认证协议。在厄瓜多尔的小规模、热带农林业碳储碳储存地点,我们用基于学习基于遥感的透明性研究,并报告这一数据库的升级透明度项目。我们正在鼓励进行这一再研究,以研究,以便进行成本再融资,以便学习。