Active fire detection in satellite imagery is of critical importance to the management of environmental conservation policies, supporting decision-making and law enforcement. This is a well established field, with many techniques being proposed over the years, usually based on pixel or region-level comparisons involving sensor-specific thresholds and neighborhood statistics. In this paper, we address the problem of active fire detection using deep learning techniques. In recent years, deep learning techniques have been enjoying an enormous success in many fields, but their use for active fire detection is relatively new, with open questions and demand for datasets and architectures for evaluation. This paper addresses these issues by introducing a new large-scale dataset for active fire detection, with over 150,000 image patches (more than 200 GB of data) extracted from Landsat-8 images captured around the world in August and September 2020, containing wildfires in several locations. The dataset was split in two parts, and contains 10-band spectral images with associated outputs, produced by three well known handcrafted algorithms for active fire detection in the first part, and manually annotated masks in the second part. We also present a study on how different convolutional neural network architectures can be used to approximate these handcrafted algorithms, and how models trained on automatically segmented patches can be combined to achieve better performance than the original algorithms - with the best combination having 87.2% precision and 92.4% recall on our manually annotated dataset. The proposed dataset, source codes and trained models are available on Github (https://github.com/pereira-gha/activefire), creating opportunities for further advances in the field
翻译:在卫星图像中积极火灾探测对于管理环境保护政策、支持决策和执法至关重要,这是一个成熟的实地,多年来提出了许多技术,通常以涉及传感器特定阈值和邻里统计的像素或区域级比较为基础。在本文件中,我们利用深层学习技术解决积极火灾探测问题。近年来,深层学习技术在许多领域取得了巨大成功,但它们用于积极火灾探测是相对新的,对数据集和架构的开放问题和需求都可用于评估。本文通过引入新的大规模数据集来解决这些问题,用于积极火灾探测,这些技术通常基于从2020年8月和9月从世界各地采集的Landat-8图像中提取的超过15万个图像补丁(超过200GB的数据),包含若干地点的野火。数据集分为两个部分,包含10个带光谱图像和相关产出,由三个众所周知的手动计算算法在第一部分进行积极火灾探测,并在第二部分手工制作一个附加说明的面具。我们还提交了一份研究报告,研究如何在原始模型中实现更精确的精确性模型和精确性模型的实地部分,可以使用这些最精确的模型,从而使用最精确性地计算。