Text-to-speech and voice conversion studies are constantly improving to the
extent where they can produce synthetic speech almost indistinguishable from
bona fide human speech. In this regrad, the importance of countermeasures (CM)
against synthetic voice attacks of the automatic speaker verification (ASV)
systems emerges. Nonetheless, most end-to-end spoofing detection networks are
black box systems, and the answer to what is an effective representation for
finding artifacts still remains veiled. In this paper, we examine which feature
space can effectively represent synthetic artifacts using wav2vec 2.0, and
study which architecture can effectively utilize the space. Our study allows us
to analyze which attribute of speech signals is advantageous for the CM
systems. The proposed CM system achieved 0.31% equal error rate (EER) on
ASVspoof 2019 LA evaluation set for the spoof detection task. We further
propose a simple yet effective spoofing aware speaker verification (SASV)
methodology, which takes advantage of the disentangled representations from our
countermeasure system. Evaluation performed with the SASV Challenge 2022
database show 1.08% of SASV EER. Quantitative analysis shows that using the
explored feature space of wav2vec 2.0 advantages both spoofing CM and SASV.Comment: Submitted to Interspeech 202