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Distinguishing Weather Phenomena from Bird Migration Patterns in Radar Imagery

机译:从雷达图像中的鸟类迁徙模式区分天气现象

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Data archived by the United States radar network for weather surveillance is useful in studying ecological phenomena such as the migration patterns of birds. However, all such methods require a manual screening stage from domain experts to eliminate radar signatures of weather phenomena, since the radar beam picks up both biological and non-biological targets. Automating this screening step would be of significant help to the large-scale study of ecological phenomenon from radar data. We apply several techniques to this novel task, comparing the performance of Convolutional Neural Networks (CNNs) models against a baseline of the Fisher Vector model on SIFT descriptors. We compare the performance of deeper and shallower network architectures, deep texture models versus the regular CNN model and the effect of fine-tuning ImageNet pre-trained networks on radar imagery. Fine-tuning the networks on the radar imagery provides a significant boost, and we achieve an accuracy of 94.4% on a dataset of 13,194 radar scans, 3,799 of which contained rain.
机译:美国雷达网络为天气监视而存档的数据对于研究生态现象(例如鸟类的迁徙模式)很有用。但是,所有此类方法都需要领域专家进行手动筛选,以消除天气现象的雷达信号,因为雷达束会同时拾取生物和非生物目标。自动化此筛选步骤将对从雷达数据进行的大规模生态现象研究产生重大帮助。我们将多种技术应用于这项新颖的任务,将卷积神经网络(CNN)模型的性能与SIFT描述符上的Fisher向量模型的基准进行比较。我们比较了较深和较浅的网络体系结构,较深的纹理模型与常规CNN模型的性能以及微调ImageNet预训练网络对雷达图像的影响。对雷达影像上的网络进行微调可以大大提高雷达的精度,在13194次雷达扫描(其中3799次包含雨水)的数据集上,我们达到了94.4%的准确度。

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