论文标题
使用遥感和机器学习对树皮甲虫攻击的早期检测:评论
Early Detection of Bark Beetle Attack Using Remote Sensing and Machine Learning: A Review
论文作者
论文摘要
本文从三个主要角度:树皮甲虫和宿主的相互作用,RS和ML/DL对过去和当前的进步进行了全面的综述。与先前的努力相反,本综述涵盖了所有RS系统,并强调了ML/DL方法来研究其优势和劣势。 We parse existing literature based on multi- or hyper-spectral analyses and distill their knowledge based on: bark beetle species & attack phases with a primary emphasis on early stages of attacks, host trees, study regions, RS platforms & sensors, spectral/spatial/temporal resolutions, spectral signatures, spectral vegetation indices (SVIs), ML approaches, learning schemes, task categories, models, algorithms,类/集群,功能和DL网络和体系结构。尽管基于DL的方法和随机森林(RF)算法显示出令人鼓舞的结果,突显了它们在可见,热和短波红外(SWIR)光谱区域中检测出细微的变化的潜力,但它们的有效性仍然有限,不确定性很高。为了激发这些缺点的新颖解决方案,我们从不同的角度深入研究了主要的挑战和机遇,从而更深入地了解研究的现状并指导未来的研究方向。
This paper provides a comprehensive review of past and current advances in the early detection of bark beetle-induced tree mortality from three primary perspectives: bark beetle & host interactions, RS, and ML/DL. In contrast to prior efforts, this review encompasses all RS systems and emphasizes ML/DL methods to investigate their strengths and weaknesses. We parse existing literature based on multi- or hyper-spectral analyses and distill their knowledge based on: bark beetle species & attack phases with a primary emphasis on early stages of attacks, host trees, study regions, RS platforms & sensors, spectral/spatial/temporal resolutions, spectral signatures, spectral vegetation indices (SVIs), ML approaches, learning schemes, task categories, models, algorithms, classes/clusters, features, and DL networks & architectures. Although DL-based methods and the random forest (RF) algorithm showed promising results, highlighting their potential to detect subtle changes across visible, thermal, and short-wave infrared (SWIR) spectral regions, they still have limited effectiveness and high uncertainties. To inspire novel solutions to these shortcomings, we delve into the principal challenges & opportunities from different perspectives, enabling a deeper understanding of the current state of research and guiding future research directions.