气溶胶层分割的无监督深度学习模型

Cristian Manolache, Mihai Boldeanu, C. Talianu, H. Cucu
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引用次数: 0

摘要

大气粒子和气溶胶的识别是气候学中一个非常重要的课题。然而,在分类之前,需要对气溶胶的各种均质层进行分割。在本文中,我们提出了一个初步的工作朝着气溶胶自动分割系统的发展。如果没有可用于此任务的注释数据集,我们使用无监督机器学习技术来解决问题。以前用于其他类似分割任务的几个机器学习(ML)模型已经经过训练,目的是根据输入数据识别各种类型的气溶胶。最初的模型性能显示不满意的结果,因此进行了几次调整以满足我们的要求。对用于气溶胶分割的ML模型进行了客观的评价,仅在重建效率方面,更准确地说,是模型对输入数据的重建程度。由于没有带注释的数据集(既没有用于训练,也没有用于评估),因此没有客观地评估模型的分割效率。因此,分割结果已由人类专家进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised deep learning models for aerosol layers segmentation
Identification of atmospheric particles and aerosols is a very important topic in climatology. However, before classification, the various homogenous layers of aerosols need to be segmented. In this paper we present an initial work towards the development of an automated segmentation system for aerosols. Provided that there are no annotated datasets available for this task, we approach the problem using unsupervised machine learning techniques. Several machine learning (ML) models, previously used in other similar segmentation tasks, have been trained for the purpose of identifying various types of aerosols based on the input data. Initial model performance showed unsatisfactory results and thus several adjustments were made to fit our requirements. The ML models for aerosol segmentation have been evaluated objectively, only in terms of reconstruction efficiency, more precisely, how well does the model recreate the input data. Since there is no annotated dataset (neither for training, nor for evaluation), the segmentation efficiency of the models was not evaluated objectively. Consequently, the segmentation results have been evaluated by a human expert.
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