Best-of-N TTS Evaluation is Confounded by ASR Family Alignment
Abstract
Best-of-N (BoN) inference improves content consistency in zero-shot text-to-speech by selecting from N candidates with an automatic speech recognition (ASR) verifier. We identify an underexplored evaluation confound: a verifier's apparent quality depends strongly on which ASR family judges it. On LibriSpeech-PC test-clean~librispeechpc with F5-TTS~f5tts, verifier rankings reverse across Whisper, wav2vec~2.0, and HuBERT evaluators, and same-family verifier-evaluator pairs recover 2-3× more oracle headroom than cross-family pairs despite near-identical representations (linear CKA 0.978) -- a pattern consistent with identity- or lineage-level coupling rather than representational overlap. We propose two cross-family rank ensembles (rank-averaging and conjunctive max-rank) that attain the lowest mean WER across three independent evaluators -- 1.61\% at N=10 (-12\% relative to F5-TTS) -- with no measurable degradation under automatic SIM-o/UTMOS metrics; the best single verifier drives WER from 2.06\% to 1.72\% (-16.5\%) under the official F5-TTS evaluator. We recommend cross-evaluator triangulation as default reporting practice.
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