FlowMur: A Stealthy and Practical Audio Backdoor Attack with Limited Knowledge
Jiahe Lan, Jie Wang, Baochen Yan, Zheng Yan, and Elisa Bertino

TL;DR
FlowMur introduces a stealthy, practical audio backdoor attack that requires limited knowledge, employs adaptive data poisoning, and remains effective against defenses and in real-world conditions.
Contribution
It presents a novel audio backdoor attack method that enhances stealthiness and practicality with limited knowledge, using adaptive poisoning and trigger optimization.
Findings
High attack success rate in digital and physical settings
Triggers are difficult for humans to detect
Robust against state-of-the-art defenses
Abstract
Speech recognition systems driven by DNNs have revolutionized human-computer interaction through voice interfaces, which significantly facilitate our daily lives. However, the growing popularity of these systems also raises special concerns on their security, particularly regarding backdoor attacks. A backdoor attack inserts one or more hidden backdoors into a DNN model during its training process, such that it does not affect the model's performance on benign inputs, but forces the model to produce an adversary-desired output if a specific trigger is present in the model input. Despite the initial success of current audio backdoor attacks, they suffer from the following limitations: (i) Most of them require sufficient knowledge, which limits their widespread adoption. (ii) They are not stealthy enough, thus easy to be detected by humans. (iii) Most of them cannot attack live speech,…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Anomaly Detection Techniques and Applications · Network Security and Intrusion Detection
