Digital audio tampering detection using ENF feature and LST-MInception net
Konferenz: AIIPCC 2022 - The Third International Conference on Artificial Intelligence, Information Processing and Cloud Computing
21.06.2022 - 22.06.2022 in Online
Tagungsband: AIIPCC 2022
Seiten: 4Sprache: EnglischTyp: PDF
Autoren:
Zhao, Jinhong; Lu, Binbin; Huang, Lian; Huang, Mingjing; Huang, Jiahao (Guangdong Mechanical & Electrical Polytechnic, Guangdong, China)
Inhalt:
In recent years, with the rapid development of audio editing technology, detecting the edited audio is becoming more and more difficult. This brings serious risks to personal information security, such as voice locking. Electronic network frequency (ENF) is a signal embedded in many audio recordings, and we can extract the relevant features and put them into neural networks for training. We combine LSTM network with inception network, which is widely used in audio processing, and add Inception element on this basis, so that network editing at different times can have a good detection effect. Experimental results show that this method can detect forged data in ENF speech database with 95.4% accuracy.