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Application of Data Augmentation Methods to Unmanned Aerial Vehicle Monitoring System for Facial Camouflage Recognition

机译:数据增强方法在面部伪装识别无人机监控系统中的应用

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Recently, the Unmanned Aerial Vehicle (UAV) monitoring system based on face recognition technology has attracted much attention. However, partly because of human hair changes, glasses wearing and other camouflage behavior, the accuracy of UAV face recognition system is still not high enough. In this paper, two kinds of data augmentation methods (the hairstyle hypothesis and eyeglass hypothesis) are used to expand the face dataset to make up the shortage of the original face data. In addition, the UAV locates human's face in the air from special distance and elevation, the collected face characteristics are vastly different from those in the public face library. Considering the peculiarity of UAV face localization, the data augmentation program is implemented to improve the accuracy of UAV identification of camouflage face to be 97.5%. The results show that our approach is effective and feasible.
机译:近来,基于面部识别技术的无人机监视系统已经引起了广泛的关注。然而,部分由于人的头发变化,眼镜佩戴和其他伪装行为,无人机人脸识别系统的准确性仍然不够高。本文使用两种数据扩充方法(发型假设和眼镜假设)来扩展人脸数据集,以弥补原始人脸数据的不足。此外,无人机从特定的距离和高度定位空气中的人脸,所收集的人脸特征与公共人脸库中的人脸特征有很大不同。考虑到无人机面部定位的特殊性,采用数据增强程序将伪装面部的无人机识别精度提高到97.5%。结果表明,该方法是有效可行的。

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