Zehra Ozkan, Erdem Bayhan, Mustafa Namdar, Arif Basgumus
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引用次数: 7
摘要
在这项研究中,提出了基于深度学习的威胁检测和识别方法,在军事和国防工业方面进行了评估,使用树莓派平台的无人机(UAV)。在该方法中,首先使用深度学习算法之一的卷积神经网络对对象进行机器学习训练。通过选择深度学习方法的Faster-RCNN和SSD MobileNet V2架构,目的是比较训练结束时准确率的成果。为了在推荐方法的训练和测试阶段使用,需要确定包含来自不同天气、陆地条件和一天中不同时间段的图像的数据集。使用3948张图像训练了检测和识别威胁元素的模型。然后,将训练好的模型转移到Raspberry Pi 4 model B电子板上。通过树莓派相机V2模块,用无人机拍摄的军事行动图像和记录测试了检测和识别目标的方法。在Faster-RCNN架构中,目标检测和识别的准确率达到了%91,而在SSD MobileNet V2架构中,这一准确率达到了%88。
Object Detection and Recognition of Unmanned Aerial Vehicles Using Raspberry Pi Platform
In this study, the methods of deep learningbased detection and recognition of threats, evaluated in terms of military and defense industry, using Raspberry Pi platform by unmanned aerial vehicles (UAV) are presented. In the proposed approach, firstly, the training for machine learning on the objects is carried out using convolutional neural networks, which is one of the deep learning algorithms. By choosing the Faster-RCNN and SSD MobileNet V2 architectures of the deep learning method, it is aimed to compare the achievements of the accuracy at the end of the training. In order to be used in the training and testing stages of the recommended methods, data sets containing images selected from different weather, land conditions and different time periods of the day are determined. The model for the detection and recognition of the threatening elements is trained, using 3948 images. Then, the trained model was transferred to the Raspberry Pi 4 Model B electronic board. The method of detecting and recognizing the objects is tested with military operation images and records taken by the UAVs via Raspberry Pi Camera V2 module. While an accuracy rate of %91 has been achieved in the Faster-RCNN architecture in object detection and recognition, this rate has been observed as %88 in the SSD MobileNet V2 architecture.