Integrating Crowd-sourced Annotations of Tree Crowns using Markov Random Field and Multispectral Information

Qipeng Mei, Janik Steier, D. Iwaszczuk
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Abstract

Abstract. Benefiting from advancements in algorithms and computing capabilities, supervised deep learning models offer significant advantages in accurately mapping individual tree canopy cover, which is a fundamental component of forestry management. In contrast to traditional field measurement methods, deep learning models leveraging remote sensing data circumvent access limitations and are more cost-effective. However, the efficiency of models depends on the accuracy of the tree crown annotations, which are often obtained through manual labeling. The intricate features of the tree crown, characterized by irregular contours, overlapping foliage, and frequent shadowing, pose a challenge for annotators. Therefore, this study explores a novel approach that integrates the annotations of multiple annotators for the same region of interest. It further refines the labels by leveraging information extracted from multi-spectral aerial images. This approach aims to reduce annotation inaccuracies caused by personal preference and bias and obtain a more balanced integrated annotation.
利用马尔可夫随机场和多光谱信息整合树冠的众包注释
摘要得益于算法和计算能力的进步,有监督的深度学习模型在精确绘制个体树冠覆盖图方面具有显著优势,而树冠覆盖图是林业管理的基本组成部分。与传统的实地测量方法相比,利用遥感数据的深度学习模型规避了访问限制,而且更具成本效益。然而,模型的效率取决于树冠标注的准确性,而树冠标注通常是通过人工标注获得的。树冠的特征错综复杂,具有不规则的轮廓、重叠的叶片和频繁的阴影,这给标注者带来了挑战。因此,本研究探索了一种新方法,即整合多个标注者对同一兴趣区域的标注。它利用从多光谱航空图像中提取的信息,进一步完善了标签。这种方法旨在减少因个人偏好和偏见造成的注释不准确性,并获得更均衡的综合注释。
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