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Automatic identification of bird targets with radar via patterns produced by wing flapping

机译:通过机翼拍打产生的图案用雷达自动识别鸟类目标

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摘要

Bird identification with radar is important for bird migration research, environmental impact assessments (e.g. wind farms), aircraft security and radar meteorology. In a study on bird migration, radar signals from birds, insects and ground clutter were recorded. Signals from birds show a typical pattern due to wing flapping. The data were labelled by experts into the four classes BIRD, INSECT, CLUTTER and UFO (unidentifiable signals). We present a classification algorithm aimed at automatic recognition of bird targets. Variables related to signal intensity and wing flapping pattern were extracted (via continuous wavelet transform). We used support vector classifiers to build predictive models. We estimated classification performance via cross validation on four datasets. When data from the same dataset were used for training and testing the classifier, the classification performance was extremely to moderately high. When data from one dataset were used for training and the three remaining datasets were used as test sets, the performance was lower but still extremely to moderately high. This shows that the method generalizes well across different locations or times. Our method provides a substantial gain of time when birds must be identified in large collections of radar signals and it represents the first substantial step in developing a real time bird identification radar system. We provide some guidelines and ideas for future research.
机译:雷达识别鸟类对于鸟类迁移研究,环境影响评估(例如风电场),飞机安全和雷达气象学至关重要。在一项鸟类迁徙研究中,记录了鸟类,昆虫和地面杂波的雷达信号。由于机翼拍打,鸟类的信号显示出典型的模式。专家将数据标记为BIRD,INSECT,CLUTTER和UFO(无法识别的信号)四类。我们提出了一种旨在自动识别鸟类目标的分类算法。提取与信号强度和机翼拍打模式有关的变量(通过连续小波变换)。我们使用支持向量分类器来构建预测模型。我们通过交叉验证四个数据集来评估分类性能。当将来自同一数据集的数据用于训练和测试分类器时,分类性能非常高。当将来自一个数据集的数据用于训练并将其余三个数据集用作测试集时,性能较低,但仍然极高到中等程度。这表明该方法可以很好地概括不同位置或时间。当必须在大量雷达信号中识别鸟类时,我们的方法可提供大量的时间,它代表了开发实时鸟类识别雷达系统的第一步。我们为将来的研究提供了一些指导方针和想法。

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