Detecting False Data Injections in Images Collected by Drones: A Deep Learning Approach

被引:2
作者
Nait-Abdesselam, Farid [1 ]
Titouna, Chafiq [2 ]
Khokhar, Ashfaq [3 ]
机构
[1] Univ Missouri Kansas City, Kansas City, MO 64110 USA
[2] Univ Paris Cite, Paris, France
[3] Iowa State Univ, Iowa City, IA USA
来源
2022 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM 2022) | 2022年
关键词
Drones; False Data Injection; Deep Learning; ATTACK;
D O I
10.1109/GLOBECOM48099.2022.10001078
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Drones are gaining high popularity for their beneficial use in civilian applications and smart cities. Capable of being structured in networks, they can be used to collect several types of data, such as images, and be sent to centers for further processing. At the same time, they also become a new target for multiple types of attacks, among them False Data Injection (FDI), Denial of Service, GPS Spoofing, etc. Therefore, designing new systems and defense mechanisms against these attacks becomes urgent and necessary. In this paper, we emphasize the dangerous nature of the so-called False Data Injection (FDI) and describe a method based on deep learning for its detection. Considered a severe and powerful attack, an injection of false data into the data (images) collected by the drones can considerably alter a final decision that the processing center may take. To fight against this attack, our proposal relies on image analysis and classification using a deep learning approach. After scaling the received image to fit the classifier, using nearest neighbor interpolation (NNI), we feed a convolutional neural network (CNN) to perform image classification. At the end, we compare each class of classification results to a neighborhood using the Mahalanobis distance. Numerical results obtained on the existing dataset [1] demonstrate that our proposal performs well, regardless of the image size, showing an accuracy of 99.21%, a precision of 99.12%, a recall of 99.05%, and an F-score of 0.992%.
引用
收藏
页码:263 / 268
页数:6
相关论文
共 18 条
[1]  
Abadi M., 2015, TensorFlow: Large-Scale Machine Learning on Heterogeneous Systems
[2]   Detection of Fault Data Injection Attack on UAV Using Adaptive Neural Network [J].
Abbaspour, Alireza ;
Yen, Kang K. ;
Noei, Shirin ;
Sargolzaei, Arman .
COMPLEX ADAPTIVE SYSTEMS, 2016, 95 :193-200
[3]   Network intrusion detection system for UAV ad-hoc communication: From methodology design to real test validation [J].
Condomines, Jean-Philippe ;
Zhang, Ruohao ;
Larrieu, Nicolas .
AD HOC NETWORKS, 2019, 90
[4]   Using Botnets to provide security for safety critical embedded systems - a case study focused on UAVs [J].
Garcia Muzzi, Fernando Augusto ;
de Mello Cardoso, Paulo Rogerio ;
Pigatto, Daniel Fernando ;
Jaquie Castelo Branco, Kalinka Regina Lucas .
4TH INTERNATIONAL CONFERENCE ON MATHEMATICAL MODELING IN PHYSICAL SCIENCES (IC-MSQUARE2015), 2015, 633
[5]  
Glorot Xavier, 2010, J MACH LEARN RES, V9, P249
[6]   Detection, estimation, and compensation of false data injection attack for UAVs [J].
Gu, Yapei ;
Yu, Xiang ;
Guo, Kexin ;
Qiao, Jianzhong ;
Guo, Lei .
INFORMATION SCIENCES, 2021, 546 :723-741
[7]   Detection of Eavesdropping Attack in UAV-Aided Wireless Systems: Unsupervised Learning With One-Class SVM and K-Means Clustering [J].
Hoang, Tiep M. ;
Nguyen, Nghia M. ;
Duong, Trung Q. .
IEEE WIRELESS COMMUNICATIONS LETTERS, 2020, 9 (02) :139-142
[8]  
Kacem T, 2016, IEEE TRUST BIG, P544, DOI [10.1109/TrustCom.2016.0108, 10.1109/TrustCom.2016.107]
[9]   Empirical Analysis of MAVLink Protocol Vulnerability for Attacking Unmanned Aerial Vehicles [J].
Kwon, Young-Min ;
Yu, Jaemin ;
Cho, Byeong-Moon ;
Eun, Yongsoon ;
Park, Kyung-Joon .
IEEE ACCESS, 2018, 6 :43203-43212
[10]  
Liu L, 2020, INT CONF UNMAN AIRCR, P1278, DOI [10.1109/icuas48674.2020.9213874, 10.1109/ICUAS48674.2020.9213874]