Deep learning has brought impressive progress in the study of both automatic
speaker verification (ASV) and spoofing countermeasures (CM). Although
solutions are mutually dependent, they have typically evolved as standalone
sub-systems whereby CM solutions are usually designed for a fixed ASV system.
The work reported in this paper aims to gauge the improvements in reliability
that can be gained from their closer integration. Results derived using the
popular ASVspoof2019 dataset indicate that the equal error rate (EER) of a
state-of-the-art ASV system degrades from 1.63% to 23.83% when the evaluation
protocol is extended with spoofed trials.%subjected to spoofing attacks.
However, even the straightforward integration of ASV and CM systems in the form
of score-sum and deep neural network-based fusion strategies reduce the EER to
1.71% and 6.37%, respectively. The new Spoofing-Aware Speaker Verification
(SASV) challenge has been formed to encourage greater attention to the
integration of ASV and CM systems as well as to provide a means to benchmark
different solutions.Comment: 8 pages, accepted by Odyssey 202