ASVspoof 5: Design, Collection and Validation of Resources for Spoofing, Deepfake, and Adversarial Attack Detection Using Crowdsourced Speech
Xin Wang, H\'ector Delgado, Hemlata Tak, Jee-weon Jung, Hye-jin Shim,, Massimiliano Todisco, Ivan Kukanov, Xuechen Liu, Md Sahidullah, Tomi, Kinnunen, Nicholas Evans, Kong Aik Lee, Junichi Yamagishi, Myeonghun Jeong,, Ge Zhu, Yongyi Zang, You Zhang, Soumi Maiti, Florian Lux

TL;DR
ASVspoof 5 introduces a large, diverse, and challenging speech spoofing database with new attack types, supporting research in detection of speech spoofing, deepfakes, and adversarial attacks across varied acoustic conditions.
Contribution
This paper presents the creation and validation of the ASVspoof 5 database, featuring diverse attack algorithms, crowdsourced data, and new protocols for evaluating spoofing detection methods.
Findings
Validated baseline detectors on the new database.
Demonstrated increased challenge with diverse attack types.
Resources are publicly available for research use.
Abstract
ASVspoof 5 is the fifth edition in a series of challenges which promote the study of speech spoofing and deepfake attacks as well as the design of detection solutions. We introduce the ASVspoof 5 database which is generated in a crowdsourced fashion from data collected in diverse acoustic conditions (cf. studio-quality data for earlier ASVspoof databases) and from ~2,000 speakers (cf. ~100 earlier). The database contains attacks generated with 32 different algorithms, also crowdsourced, and optimised to varying degrees using new surrogate detection models. Among them are attacks generated with a mix of legacy and contemporary text-to-speech synthesis and voice conversion models, in addition to adversarial attacks which are incorporated for the first time. ASVspoof 5 protocols comprise seven speaker-disjoint partitions. They include two distinct partitions for the training of different…
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Taxonomy
TopicsHate Speech and Cyberbullying Detection · Adversarial Robustness in Machine Learning · Misinformation and Its Impacts
MethodsSparse Evolutionary Training
