RVCBench: Benchmarking the Robustness of Voice Cloning Across Modern Audio Generation Models
Paper • 2602.00443 • Published
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RVCBench is a benchmark dataset for studying robustness in voice cloning and related audio generation pipelines.
Each subset is exposed as its own Hugging Face dataset configuration. Most subsets contain:
metadata.parquetaudios/The canonical metadata stores one row per benchmark pair with columns such as:
speaker_idprompt_file_nameprompt_textprompt_languagetarget_file_nametarget_texttarget_languagepair_iddataset_namesplitWhen available, training-oriented annotations are also preserved:
prompt_phonemes, prompt_tone, prompt_word2phtarget_phonemes, target_tone, target_word2phSome subsets include additional task-specific metadata, for example spam_type in robotcall.
AISHELL1_devBackground_noiseBilingual_uedinCommonVoiceFR_devLibrittsLong_contextMultispeaker_libriVCTKrobotcallvctk_text_robustcompression directory is intentionally excluded from this dataset release.This dataset is introduced in: RVCBench: Benchmarking the Robustness of Voice Cloning Across Modern Audio Generation Models