基于深度残差神经网络的无人机加载与卸载图像分类

U. Seidaliyeva, Manal Alduraibi, L. Ilipbayeva, N. Smailov
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引用次数: 14

摘要

像任何新技术一样,无人驾驶飞行器不仅用于良好的目的。如今,攻击者将无人机用于运送毒品、运输爆炸物和监视。因此,无人机的检测与分类是该领域研究人员面临的重要问题。以往在无人机分类领域的研究多集中在将无人机图像分类为无人机与非无人机,或无人机与其他飞行物,以及对不同型号的无人机进行分类。提出了一种基于深度残差卷积神经网络的无人机加载和卸载图像分类方法。随着神经网络深度的增加,其学习误差也随之增大。在这种情况下,残差神经网络的优化相对容易。此外,ResNet可以通过增加深度来轻松提高准确性,这在其他网络中很难实现。本文试图证明,使用ResNet-34对加载和卸载的无人机图像进行分类具有优越的性能和可接受的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep residual neural network-based classification of loaded and unloaded UAV images
Like any new technology, unmanned aerial vehicles are used not only for good purposes. Nowadays attackers adapted UAVs for drug delivery, transportation of explosives and surveillance. For this reason, UAV detection and classification are the significant problems for researchers of this area. Previous studies in the field of UAV classification have mostly focused on classifying UAV images as UAV and no UAV, or UAV and other flying objects, also classifying different UAV models. This paper proposes a deep residual convolutional neural network based classification of loaded and unloaded UAV images. As the depth of neural network increases it shows a large learning error. In this case it is relatively easy to optimize residual neural network. Also, ResNet makes it easy to increase accuracy by increasing depth, which is more difficult to achieve with other networks. This paper attempts to show that using ResNet-34 for classification of loaded and unloaded UAV images gives superior performance and acceptable accuracy.
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