基于深度迁移学习的无人机分类与检测

W. Meng, Meng Tia
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引用次数: 4

摘要

目前,因无人机“无证飞行”引发的重大安全事件层出不穷,对公共设施和敏感区域的安全问题构成严重威胁。能否及时发现和防止无人机“无证飞行”已成为社会关注的问题。针对这一需求,本文采用迁移学习方法对无人机图像进行二次分类和检测。基于迁移学习的图像识别技术是将深度学习模型应用于小样本,提高识别精度的有效方法。与深度学习所需的大量训练样本不同,迁移学习将预训练好的深度神经网络的权值进行转移,仅使用小样本数据就能在无人机图像识别中获得良好的效果。首先,本文提出根据不同类型的无人机形状结构构建无人机数据集,以完善模型的分类检测效果和泛化能力。然后,基于迁移学习方法,对三种经典的深度卷积神经网络分类模型(Inception V3、ResNet 101和VGG16)和两种经典的深度卷积神经网络检测模型(Faster RCNN和SSD)进行了实验比较。最后,对采集到的无人机测试数据集进行了实验评估。与传统的识别模型相比,本文采用的基于迁移学习的图像分类模型在准确率、查全率和查准率方面都有了重要的提高。特别是在迁移训练的InceptionV3模型中,召回率达到96.98%。此外,基于迁移学习的图像检测模型在准确率、查全率和f1分数方面都取得了较好的检测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unmanned Aerial Vehicle Classification and Detection Based on Deep Transfer Learning
Currently, major security incidents caused by the “unlicensed flying” of Unmanned Aerial Vehicle (UAV) have emerged one after another, which poses a grave threat to the security issues of public facilities and sensitive areas. Whether it can timely detect and prevent “unlicensed flying” of UAV has become a social concern. In response to this demand, the transfer learning method is adopted in this paper to conduct twoclassification and detection on UAV images. Image recognition technology based on transfer learning is an effective method to improve recognition accuracy by applying deep learning models to small samples. Different from the large number of training samples required by deep learning, transfer learning transfers the weights of the pre-trained deep neural network, and uses only small sample data to obtain good results in UAV image recognition. First of all, this paper proposes to construct a UAV data set according to different types of UAV shape structures, to perfect the classification and detection effect and the generalization ability of the model. Then, based on the transfer learning method, experimental comparison is made between three classic deep convolutional neural network classification models (Inception V3, ResNet 101 and VGG16) and two classic deep convolutional neural network detection models (Faster RCNN and SSD). Finally, an experimental evaluation is conducted on the collected UAV test data set. Compared with the traditional recognition model, the image classification model based on transfer learning employed in this paper has achieved important improvements in accuracy, recall and precision. Especially in the InceptionV3 model of transfer training, the recall reaches 96.98%. In addition, the image detection model based on transfer learning has achieved good detection results in accuracy, recall and F1-score.
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