Att-Mask R-CNN: an individual tree crown instance segmentation method based on fused attention mechanism

IF 1.7 3区 农林科学 Q2 FORESTRY Canadian Journal of Forest Research Pub Date : 2024-06-04 DOI:10.1139/cjfr-2023-0187
Wenjing Chen, Zhihao Guan, Demin Gao
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Abstract

Tree detection and canopy area measurement are important and difficult tasks in forest inventory, which are important for understanding forest stand structure. This study utilized remotely piloted aircraft (RPA) aerial photography technology to collect remote sensing images of forests in Xiong County, China, creating a dataset comprising 1200 images of six tree species. Based on this dataset, the paper proposes an optimized model, Att-Mask R-CNN, for canopy detection and segmentation. Att-Mask R-CNN outperforms the original models (Mask R-CNN and MS R-CNN) by achieving 65.29% mean average precision for detection, 80.44% mean intersection over union for segmentation, and 90.67% overall recognition rate for the six tree species. In addition, a pixel statistics method based on segmentation masks is introduced for estimating the vertical projected area of individual tree crowns, and comparisons between the measured and predicted vertical projected area of the crowns of six tree species (100 trees of each class) show an overall goodness-of-fit R2 of 85% and a relative root-mean-square error rRMSE of 12.81%. By using remote sensing images from RPAs and optimizing existing deep learning models, the detection and segmentation of individual tree canopies can be achieved, resulting in a more accurate understanding of forest structure, which provides scientific support for forest management and resource monitoring.
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Att-Mask R-CNN:基于融合注意力机制的个体树冠实例分割方法
树木探测和冠层面积测量是森林资源清查中重要而困难的工作,对于了解林分结构非常重要。本研究利用遥控飞机(RPA)航空摄影技术采集了中国雄县的森林遥感图像,建立了一个由 1200 张图像组成的数据集,包含 6 个树种。基于该数据集,本文提出了一种用于树冠检测和分割的优化模型--Att-Mask R-CNN。Att-Mask R-CNN 优于原始模型(Mask R-CNN 和 MS R-CNN),其检测平均精度为 65.29%,分割平均交集大于联合精度为 80.44%,对六个树种的总体识别率为 90.67%。此外,还引入了一种基于分割掩模的像素统计方法,用于估算单个树冠的垂直投影面积,并对六个树种(每类 100 棵树)的树冠垂直投影面积的测量值和预测值进行比较,结果显示总体拟合优度 R2 为 85%,相对均方根误差 rRMSE 为 12.81%。通过使用 RPA 的遥感图像并优化现有的深度学习模型,可以实现单个树冠的检测和分割,从而更准确地了解森林结构,为森林管理和资源监测提供科学支持。
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来源期刊
CiteScore
4.20
自引率
9.10%
发文量
109
审稿时长
3 months
期刊介绍: Published since 1971, the Canadian Journal of Forest Research is a monthly journal that features articles, reviews, notes and concept papers on a broad spectrum of forest sciences, including biometrics, conservation, disturbances, ecology, economics, entomology, genetics, hydrology, management, nutrient cycling, pathology, physiology, remote sensing, silviculture, social sciences, soils, stand dynamics, and wood science, all in relation to the understanding or management of ecosystem services. It also publishes special issues dedicated to a topic of current interest.
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