Adversarial Attacks on Time Series

Volume: 43, Issue: 10, Pages: 3309 - 3320
Published: Oct 1, 2021
Abstract
Time series classification models have been garnering significant importance in the research community. However, not much research has been done on generating adversarial samples for these models. These adversarial samples can become a security concern. In this paper, we propose utilizing an adversarial transformation network (ATN) on a distilled model to attack various time series classification models. The proposed attack on the classification...
Paper Details
Title
Adversarial Attacks on Time Series
Published Date
Oct 1, 2021
Volume
43
Issue
10
Pages
3309 - 3320
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