USDA Forest Service, Forest Health Assessment and Applied Sciences Team, Fort Collins, Colorado, United States of America.
Team Kapili Services, LLC, Fort Collins, Colorado, United States of America.
PLoS One. 2022 Oct 5;17(10):e0272360. doi: 10.1371/journal.pone.0272360. eCollection 2022.
Protecting the future of forests in the United States and other countries depends in part on our ability to monitor and map forest health conditions in a timely fashion to facilitate management of emerging threats and disturbances over a multitude of spatial scales. Remote sensing data and technologies have contributed to our ability to meet these needs, but existing methods relying on supervised classification are often limited to specific areas by the availability of imagery or training data, as well as model transferability. Scaling up and operationalizing these methods for general broadscale monitoring and mapping may be promoted by using simple models that are easily trained and projected across space and time with widely available imagery. Here, we describe a new model that classifies high resolution (~1 m2) 3-band red, green, blue (RGB) imagery from a single point in time into one of four color classes corresponding to tree crown condition or health: green healthy crowns, red damaged or dying crowns, gray damaged or dead crowns, and shadowed crowns where the condition status is unknown. These Tree Crown Health (TCH) models trained on data from the United States (US) Department of Agriculture, National Agriculture Imagery Program (NAIP), for all 48 States in the contiguous US and spanning years 2012 to 2019, exhibited high measures of model performance and transferability when evaluated using randomly withheld testing data (n = 122 NAIP state x year combinations; median overall accuracy 0.89-0.90; median Kappa 0.85-0.86). We present examples of how TCH models can detect and map individual tree mortality resulting from a variety of nationally significant native and invasive forest insects and diseases in the US. We conclude with discussion of opportunities and challenges for extending and implementing TCH models in support of broadscale monitoring and mapping of forest health.
保护美国和其他国家的森林未来,部分取决于我们及时监测和绘制森林健康状况的能力,以便在多个空间尺度上管理新出现的威胁和干扰。遥感数据和技术有助于我们满足这些需求,但现有的基于监督分类的方法通常受到可用图像或训练数据的限制,以及模型的可转移性。通过使用简单的模型,可以在广泛可用的图像上进行训练和投影,从而在空间和时间上进行扩展和实施这些方法,以实现广泛的监测和制图。在这里,我们描述了一种新的模型,该模型可以将来自单一时间点的高分辨率(~1 m2)三波段红、绿、蓝(RGB)图像分类为四个颜色类之一,对应于树冠状况或健康状况:绿色健康树冠、红色受损或垂死树冠、灰色受损或死亡树冠以及树冠状况未知的阴影树冠。这些基于美国农业部(USDA)国家农业图像计划(NAIP)数据训练的树冠健康(TCH)模型,涵盖了美国 48 个州,时间跨度为 2012 年至 2019 年,在使用随机保留测试数据进行评估时表现出了很高的模型性能和可转移性(n = 122 个 NAIP 州 x 年组合;总体准确性中位数为 0.89-0.90;Kappa 中位数为 0.85-0.86)。我们展示了 TCH 模型如何检测和绘制因美国各种具有全国意义的本地和入侵性森林昆虫和疾病而导致的单株树木死亡的示例。我们最后讨论了扩展和实施 TCH 模型以支持森林健康广泛监测和制图的机会和挑战。