%Aigaion2 BibTeX export from Idiap Publications %Saturday 23 November 2024 08:56:31 AM @INPROCEEDINGS{Korshunov_INTERSPEECH_2016, author = {Korshunov, Pavel and Marcel, S{\'{e}}bastien}, keywords = {cross-database testing, Open Source, presentation attack, speaker anti-spoofing}, projects = {Idiap, BEAT, SWAN}, month = sep, title = {Cross-database evaluation of audio-based spoofing detection systems}, booktitle = {Interspeech}, year = {2016}, location = {San Francisco, USA}, url = {https://pypi.python.org/pypi/bob.paper.interspeech_2016}, crossref = {Korshunov_Idiap-RR-23-2016}, abstract = {Since automatic speaker verification (ASV) systems are highly vulnerable to spoofing attacks, it is important to develop mechanisms that can detect such attacks. To be practical, however, a spoofing attack detection approach should have (i) high accuracy, (ii) be well-generalized for practical attacks, and (iii) be simple and efficient. Several audio-based spoofing detection methods have been proposed recently but their evaluation is limited to less realistic databases containing homogeneous data. In this paper, we consider eight existing presentation attack detection (PAD) methods and evaluate their performance using two major publicly available speaker databases with spoofing attacks: AVspoof and ASVspoof. We first show that realistic presentation attacks (speech is replayed to PAD system) are significantly more challenging for the considered PAD methods compared to the so called `logical access' attacks (speech is presented to PAD system directly). Then, via a cross-database evaluation, we demonstrate that the existing methods generalize poorly when different databases or different types of attacks are used for training and testing. The results question the efficiency and practicality of the existing PAD systems, as well as, call for creation of databases with larger variety of realistic speech presentation attacks.}, pdf = {https://publications.idiap.ch/attachments/papers/2016/Korshunov_INTERSPEECH_2016.pdf} } crossreferenced publications: @TECHREPORT{Korshunov_Idiap-RR-23-2016, author = {Korshunov, Pavel and Marcel, S{\'{e}}bastien}, projects = {BEAT, SWAN}, month = {10}, title = {Cross-database evaluation of audio-based spoofing detection systems}, type = {Idiap-RR}, number = {Idiap-RR-23-2016}, year = {2016}, institution = {Idiap}, note = {Open source software package for the paper: https://pypi.python.org/pypi/bob.paper.interspeech_2016}, url = {https://pypi.python.org/pypi/bob.paper.interspeech_2016}, abstract = {Since automatic speaker verification (ASV) systems are highly vulnerable to spoofing attacks, it is important to develop mechanisms that can detect such attacks. To be practical, however, a spoofing attack detection approach should have (i) high accuracy, (ii) be well-generalized for practical attacks, and (iii) be simple and efficient. Several audio-based spoofing detection methods have been proposed recently but their evaluation is limited to less realistic databases containing homogeneous data. In this paper, we consider eight existing presentation attack detection (PAD) methods and evaluate their performance using two major publicly available speaker databases with spoofing attacks: AVspoof and ASVspoof. We first show that realistic presentation attacks (speech is replayed to PAD system) are significantly more challenging for the considered PAD methods compared to the so called `logical access' attacks (speech is presented to PAD system directly). Then, via a cross-database evaluation, we demonstrate that the existing methods generalize poorly when different databases or different types of attacks are used for training and testing. The results question the efficiency and practicality of the existing PAD systems, as well as, call for creation of databases with larger variety of realistic speech presentation attacks.}, pdf = {https://publications.idiap.ch/attachments/reports/2016/Korshunov_Idiap-RR-23-2016.pdf} }