SDLGMMASJan 4, 2019

Introduction to Voice Presentation Attack Detection and Recent Advances

arXiv:1901.01085v181 citations
Originality Synthesis-oriented
AI Analysis

It addresses the problem of spoofing attacks in speaker verification systems, but is incremental as it summarizes existing studies without introducing new solutions.

This paper reviews recent progress in voice presentation attack detection (PAD) for automatic speaker recognition, highlighting that the field remains unsolved despite advancements in datasets, protocols, and methods from community challenges.

Over the past few years significant progress has been made in the field of presentation attack detection (PAD) for automatic speaker recognition (ASV). This includes the development of new speech corpora, standard evaluation protocols and advancements in front-end feature extraction and back-end classifiers. The use of standard databases and evaluation protocols has enabled for the first time the meaningful benchmarking of different PAD solutions. This chapter summarises the progress, with a focus on studies completed in the last three years. The article presents a summary of findings and lessons learned from two ASVspoof challenges, the first community-led benchmarking efforts. These show that ASV PAD remains an unsolved problem and that further attention is required to develop generalised PAD solutions which have potential to detect diverse and previously unseen spoofing attacks.

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