A Speech Adversarial Sample Detection Method Based on Manifold Learning

Bibliographic Details
Title: A Speech Adversarial Sample Detection Method Based on Manifold Learning
Authors: Xiao Ma, Dongliang Xu, Chenglin Yang, Panpan Li, Dong Li
Source: Mathematics, Vol 12, Iss 8, p 1226 (2024)
Publisher Information: MDPI AG, 2024.
Publication Year: 2024
Collection: LCC:Mathematics
Subject Terms: speech adversarial samples, manifold learning, dimensionality reduction, Mathematics, QA1-939
More Details: Deep learning-based models have achieved impressive results across various practical fields. However, these models are susceptible to attacks. Recent research has demonstrated that adversarial samples can significantly decrease the accuracy of deep learning models. This susceptibility poses considerable challenges for their use in security applications. Various methods have been developed to enhance model robustness by training with more effective and generalized adversarial examples. However, these approaches tend to compromise model accuracy. Currently proposed detection methods mainly focus on speech adversarial samples generated by specified white-box attack models. In this study, leveraging manifold learning technology, a method is proposed to detect whether a speech input is an adversarial sample before feeding it into the recognition model. The method is designed to detect speech adversarial samples generated by black-box attack models and achieves a detection success rate of 84.73%. It identifies the low-dimensional manifold of training samples and measures the distance of a sample under investigation to this manifold to determine its adversarial nature. This technique enables the preprocessing detection of adversarial audio samples before their introduction into the deep learning model, thereby preventing adversarial attacks without affecting model robustness.
Document Type: article
File Description: electronic resource
Language: English
ISSN: 2227-7390
Relation: https://www.mdpi.com/2227-7390/12/8/1226; https://doaj.org/toc/2227-7390
DOI: 10.3390/math12081226
Access URL: https://doaj.org/article/b4ccf59e8a7d43838908071c1945f9c3
Accession Number: edsdoj.b4ccf59e8a7d43838908071c1945f9c3
Database: Directory of Open Access Journals
More Details
ISSN:22277390
DOI:10.3390/math12081226
Published in:Mathematics
Language:English