TY - GEN
T1 - Universal Physical Adversarial Attack via Background Image
AU - Xu, Yidan
AU - Wang, Juan
AU - Li, Yuanzhang
AU - Wang, Yajie
AU - Xu, Zixuan
AU - Wang, Dianxin
N1 - Publisher Copyright:
© 2022, The Author(s), under exclusive license to Springer Nature Switzerland AG.
PY - 2022
Y1 - 2022
N2 - Recently, adversarial attacks against object detectors have become research hotspots in academia. However, digital adversarial attacks need to generate adversarial perturbation on digital images in a “pixel-wise” way, which is challenging to deploy accurately in the real world. Physical adversarial attacks usually need to paste the adversarial patches on the surface of target objects one by one, which is not suitable for objects with complex shapes and is challenging to deploy in practice. In this paper, we propose a universal background adversarial attack method for deep learning object detection, which puts the target objects on the universal background image and changes the local pixel information around the target objects so that the object detectors cannot recognize the target objects. This method takes the form of a universal background image for the physical adversarial attack and is easy to deploy in the real world. It can use a single universal background image to attack different classes of target objects simultaneously and has good robustness under different angles and distances. Extensive experiments have shown that the universal background attack can successfully attack two object detection models, YOLO v3 and Faster R-CNN, with average success rates of 74.9% and 67.8% with varying distances from 15 cm to 60 cm and angels from - 90 ∘ to 90 ∘ in the physical world.
AB - Recently, adversarial attacks against object detectors have become research hotspots in academia. However, digital adversarial attacks need to generate adversarial perturbation on digital images in a “pixel-wise” way, which is challenging to deploy accurately in the real world. Physical adversarial attacks usually need to paste the adversarial patches on the surface of target objects one by one, which is not suitable for objects with complex shapes and is challenging to deploy in practice. In this paper, we propose a universal background adversarial attack method for deep learning object detection, which puts the target objects on the universal background image and changes the local pixel information around the target objects so that the object detectors cannot recognize the target objects. This method takes the form of a universal background image for the physical adversarial attack and is easy to deploy in the real world. It can use a single universal background image to attack different classes of target objects simultaneously and has good robustness under different angles and distances. Extensive experiments have shown that the universal background attack can successfully attack two object detection models, YOLO v3 and Faster R-CNN, with average success rates of 74.9% and 67.8% with varying distances from 15 cm to 60 cm and angels from - 90 ∘ to 90 ∘ in the physical world.
KW - Adversarial examples
KW - Object detection
KW - Physical adversarial attack
UR - http://www.scopus.com/inward/record.url?scp=85140469633&partnerID=8YFLogxK
U2 - 10.1007/978-3-031-16815-4_1
DO - 10.1007/978-3-031-16815-4_1
M3 - Conference contribution
AN - SCOPUS:85140469633
SN - 9783031168147
T3 - Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
SP - 3
EP - 14
BT - Applied Cryptography and Network Security Workshops - ACNS 2022 Satellite Workshops, AIBlock, AIHWS, AIoTS, CIMSS, Cloud S and P, SCI, SecMT, SiMLA, Proceedings
A2 - Zhou, Jianying
A2 - Chattopadhyay, Sudipta
A2 - Adepu, Sridhar
A2 - Alcaraz, Cristina
A2 - Batina, Lejla
A2 - Casalicchio, Emiliano
A2 - Jin, Chenglu
A2 - Lin, Jingqiang
A2 - Losiouk, Eleonora
A2 - Majumdar, Suryadipta
A2 - Meng, Weizhi
A2 - Picek, Stjepan
A2 - Zhauniarovich, Yury
A2 - Shao, Jun
A2 - Su, Chunhua
A2 - Wang, Cong
A2 - Zonouz, Saman
PB - Springer Science and Business Media Deutschland GmbH
T2 - Satellite Workshops on AIBlock, AIHWS, AIoTS, CIMSS, Cloud S and P, SCI, SecMT, SiMLA 2022, held in conjunction with the 20th International Conference on Applied Cryptography and Network Security, ACNS 2022
Y2 - 20 June 2022 through 23 June 2022
ER -