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首页> 外文期刊>Atmospheric Measurement Techniques >Unsupervised classification of snowflake images using a generative adversarial network and iK/i-medoids classification
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Unsupervised classification of snowflake images using a generative adversarial network and iK/i-medoids classification

机译:使用生成的对抗网络和 k -medoids分类无监督雪花图像的分类

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摘要

The increasing availability of sensors imaging cloud and precipitation particles, like the Multi-Angle Snowflake Camera (MASC), has resulted in datasets comprising millions of images of falling snowflakes. Automated classification is required for effective analysis of such large datasets. While supervised classification methods have been developed for this purpose in recent years, their ability to generalize is limited by the representativeness of their labeled training datasets, which are affected by the subjective judgment of the expert and require significant manual effort to derive. An alternative is unsupervised classification, which seeks to divide a dataset into distinct classes without expert-provided labels. In this paper, we introduce an unsupervised classification scheme based on a generative adversarial network (GAN) that learns to extract the key features from the snowflake images. Each image is then associated with a distribution of points in the feature space, and these distributions are used as the basis of K-medoids classification and hierarchical clustering. We found that the classification scheme is able to separate the dataset into distinct classes, each characterized by a particular size, shape and texture of the snowflake image, providing signatures of the microphysical properties of the snowflakes. This finding is supported by a comparison of the results to an existing supervised scheme. Although training the GAN is computationally intensive, the classification process proceeds directly from images to classes with minimal human intervention and therefore can be repeated for other MASC datasets with minor manual effort. As the algorithm is not specific to snowflakes, we also expect this approach to be relevant to other applications.
机译:传感器成像云和降水颗粒的可用性增加,如多角度雪花相机(MASC)导致数据集包括数百万个落雪花的图像。需要自动分类来有效分析此类大型数据集。虽然近年来,监督分类方法是为此目的而开发的,但其概括的能力受到其标签培训数据集的代表性的限制,这些数据集受专家的主观判断的影响,并需要重大的手动努力派生。替代方案是无监督的分类,它试图将数据集划分为无需专家提供的标签的不同类别。在本文中,我们介绍了一种基于生成的对冲网络(GAN)的无监督的分类方案,该网络学会从雪花图像中提取关键特征。然后,每个图像与特征空间中的点的分布相关联,并且这些分布用作K-METOIDS分类和分层聚类的基础。我们发现分类方案能够将数据集分离成不同的类别,每个类别以雪花图像的特定尺寸,形状和纹理为特征,提供雪花的微手术特性的特征。通过对现有监督计划的结果的比较支持此发现。虽然培训GaN是计算密集的,但分类过程直接从图像进行到课程,以最小的人为干预,因此可以重复用于具有小型手动努力的其他MASC数据集。随着算法不具体到雪花,我们还期望这种方法与其他应用相关。

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