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Active learning approach to detecting standing dead trees from ALS point clouds combined with aerial infrared imagery

机译:从ALS点云中探测脱落树的积极学习方法与空中红外图像相结合

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Due to their role in certain essential forest processes, dead trees are an interesting object of study within the environmental and forest sciences. This paper describes an active learning-based approach to detecting individual standing dead trees, known as snags, from ALS point clouds and aerial color infrared imagery. We first segment individual trees within the 3D point cloud and subsequently find an approximate bounding polygon for each tree within the image. We utilize these polygons to extract features based on the pixel intensity values in the visible and infrared bands, which forms the basis for classifying the associated trees as either dead or living. We define a two-step scheme of selecting a small subset of training examples from a large initially unlabeled set of objects. In the first step, a greedy approximation of the kernelized feature matrix is conducted, yielding a smaller pool of the most representative objects. We then perform active learning on this moderate-sized pool, using expected error reduction as the basic method. We explore how the use of semi-supervised classifiers with minimum entropy regularizers can benefit the learning process. Based on validation with reference data manually labeled on images from the Bavarian Forest National Park, our method attains an overall accuracy of up to 89% with less than 100 training examples, which corresponds to 10% of the pre-selected data pool.
机译:由于它们在某些必要的森林过程中的作用,死树是环境和林科学中的一个有趣的研究。本文介绍了一种基于积极的学习的方法,可以从ALS点云和空中红外图像检测称为障碍的个体常驻树木。我们首先在3D点云中分段单个树,随后为图像内的每棵树找到近似边界多边形。我们利用这些多边形来提取基于可见和红外条带中的像素强度值的特征,这构成了将相关树分类为死亡或生活的基础。我们定义了从最初未标记的对象集中选择小型训练示例的一小部分的两步方案。在第一步中,进行核化特征矩阵的贪婪近似,产生更小的最代表性对象的池。然后,我们在这个中等大小的池中执行主动学习,使用预期的错误减少作为基本方法。我们探索如何使用最小熵定律机的半监督分类器可以使学习过程受益。基于在从巴伐利亚森林国家公园的图像上手动标记的参考数据的验证,我们的方法总体准确性高达89%,培训示例少于100个训练示例,其对应于预选数据池的10%。

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