Skip to main content

AdverQuil: An efficient adversarial detection and alleviation technique for black-box neuromorphic computing systems

Publication ,  Conference
Cheng, HP; Wu, Q; Shen, J; Li, H; Yang, H; Chen, Y
Published in: Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC
January 21, 2019

In recent years, neuromorphic computing systems (NCS) have gained popularity in accelerating neural network computation because of their high energy efficiency. The known vulnerability of neural networks to adversarial attack, however, raises a severe security concern of NCS. In addition, there are certain application scenarios in which users have limited access to the NCS. In such scenarios, defense technologies that require changing the training methods of the NCS, e.g., adversarial training become impracticable. In this work, we propose AdverQuil - an efficient adversarial detection and alleviation technique for black-box NCS. AdverQuil can identify the adversarial strength of input examples and select the best strategy for NCS to respond to the attack, without changing structure/parameter of the original neural network or its training method. Experimental results show that on MNIST and CIFAR-10 datasets, AdverQuil achieves a high efficiency of 79.5 - 167K image/sec/watt. AdverQuil introduces less than 25% of hardware overhead, and can be combined with various adversarial alleviation techniques to provide a flexible trade-off between hardware cost, energy efficiency and classification accuracy.

Duke Scholars

Altmetric Attention Stats
Dimensions Citation Stats

Published In

Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC

DOI

Publication Date

January 21, 2019

Start / End Page

557 / 562
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Cheng, H. P., Wu, Q., Shen, J., Li, H., Yang, H., & Chen, Y. (2019). AdverQuil: An efficient adversarial detection and alleviation technique for black-box neuromorphic computing systems. In Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC (pp. 557–562). https://doi.org/10.1145/3287624.3288753
Cheng, H. P., Q. Wu, J. Shen, H. Li, H. Yang, and Y. Chen. “AdverQuil: An efficient adversarial detection and alleviation technique for black-box neuromorphic computing systems.” In Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC, 557–62, 2019. https://doi.org/10.1145/3287624.3288753.
Cheng HP, Wu Q, Shen J, Li H, Yang H, Chen Y. AdverQuil: An efficient adversarial detection and alleviation technique for black-box neuromorphic computing systems. In: Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC. 2019. p. 557–62.
Cheng, H. P., et al. “AdverQuil: An efficient adversarial detection and alleviation technique for black-box neuromorphic computing systems.” Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC, 2019, pp. 557–62. Scopus, doi:10.1145/3287624.3288753.
Cheng HP, Wu Q, Shen J, Li H, Yang H, Chen Y. AdverQuil: An efficient adversarial detection and alleviation technique for black-box neuromorphic computing systems. Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC. 2019. p. 557–562.

Published In

Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC

DOI

Publication Date

January 21, 2019

Start / End Page

557 / 562