Fake Audio Detection
Fake audio detection research aims to develop robust methods for identifying synthetic or manipulated audio, combating the spread of misinformation and protecting against security threats. Current efforts focus on improving the generalization of detection models across diverse datasets and spoofing techniques, employing architectures like transformers, convolutional neural networks, and mask autoencoders, often leveraging pre-trained models for efficient feature extraction. This field is crucial for safeguarding audio authenticity in various applications, from speaker verification and forensic analysis to combating deepfakes and protecting against malicious audio manipulation.
Papers
Does Current Deepfake Audio Detection Model Effectively Detect ALM-based Deepfake Audio?
Yuankun Xie, Chenxu Xiong, Xiaopeng Wang, Zhiyong Wang, Yi Lu, Xin Qi, Ruibo Fu, Yukun Liu, Zhengqi Wen, Jianhua Tao, Guanjun Li, Long Ye
A Noval Feature via Color Quantisation for Fake Audio Detection
Zhiyong Wang, Xiaopeng Wang, Yuankun Xie, Ruibo Fu, Zhengqi Wen, Jianhua Tao, Yukun Liu, Guanjun Li, Xin Qi, Yi Lu, Xuefei Liu, Yongwei Li
Genuine-Focused Learning using Mask AutoEncoder for Generalized Fake Audio Detection
Xiaopeng Wang, Ruibo Fu, Zhengqi Wen, Zhiyong Wang, Yuankun Xie, Yukun Liu, Jianhua Tao, Xuefei Liu, Yongwei Li, Xin Qi, Yi Lu, Shuchen Shi
Generalized Fake Audio Detection via Deep Stable Learning
Zhiyong Wang, Ruibo Fu, Zhengqi Wen, Yuankun Xie, Yukun Liu, Xiaopeng Wang, Xuefei Liu, Yongwei Li, Jianhua Tao, Yi Lu, Xin Qi, Shuchen Shi
TO-Rawnet: Improving RawNet with TCN and Orthogonal Regularization for Fake Audio Detection
Chenglong Wang, Jiangyan Yi, Jianhua Tao, Chuyuan Zhang, Shuai Zhang, Ruibo Fu, Xun Chen
Detection of Cross-Dataset Fake Audio Based on Prosodic and Pronunciation Features
Chenglong Wang, Jiangyan Yi, Jianhua Tao, Chuyuan Zhang, Shuai Zhang, Xun Chen