Mrunalini Nalamati, Ankit Kapoor, M. Saqib, N. Sharma, M. Blumenstein
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引用次数: 49
摘要
最近,小型无人机的使用显著增加。因此,小型无人机被滥用于恐怖主义、毒品走私等非法活动的可能性越来越大,这带来了很高的安全风险。因此,跟踪和监视无人机对于防止安全漏洞至关重要。在复杂的背景下,小型无人机和鸟类的外观相似,这给监控视频中检测无人机带来了挑战。本文利用流行的、先进的基于深度学习的目标检测方法,解决了在监控视频中检测小型无人机的挑战。使用不同的基于cnn的架构,如ResNet-101和Inception with Faster-RCNN,以及单镜头检测器(Single Shot Detector, SSD)模型进行实验。由于可用于实验的数据稀疏,在使用迁移学习训练cnn时使用预训练模型。使用基于ResNet-101的Faster-RCNN进行实验,得到了最好的结果。本文对不同的CNN架构进行了实验分析,并对测试数据集进行了可视化分析。
The usage of small drones/UAVs has significantly increased recently. Consequently, there is a rising potential of small drones being misused for illegal activities such as terrorism, smuggling of drugs, etc. posing high-security risks. Hence, tracking and surveillance of drones are essential to prevent security breaches. The similarity in the appearance of small drone and birds in complex background makes it challenging to detect drones in surveillance videos. This paper addresses the challenge of detecting small drones in surveillance videos using popular and advanced deep learning-based object detection methods. Different CNN-based architectures such as ResNet-101 and Inception with Faster-RCNN, as well as Single Shot Detector (SSD) model was used for experiments. Due to sparse data available for experiments, pre-trained models were used while training the CNNs using transfer learning. Best results were obtained from experiments using Faster-RCNN with the base architecture of ResNet-101. Experimental analysis on different CNN architectures is presented in the paper, along with the visual analysis of the test dataset.