Filler words such as uh' or um' are sounds or words people use to signal they are pausing to think. Finding and removing filler words from recordings is a common and tedious task in media editing. Automatically detecting and classifying filler words could greatly aid in this task, but few studies have been published on this problem to date. A key reason is the absence of a dataset with annotated filler words for model training and evaluation. In this work, we present a novel speech dataset, PodcastFillers, with 35K annotated filler words and 50K annotations of other sounds that commonly occur in podcasts such as breaths, laughter, and word repetitions. We propose a pipeline that leverages VAD and ASR to detect filler candidates and a classifier to distinguish between filler word types. We evaluate our proposed pipeline on PodcastFillers, compare to several baselines, and present a detailed ablation study. In particular, we evaluate the importance of using ASR and how it compares to a transcription-free approach resembling keyword spotting. We show that our pipeline obtains state-of-the-art results, and that leveraging ASR strongly outperforms a keyword spotting approach. We make PodcastFillers publicly available, in the hope that our work serves as a benchmark for future research.
Filler Word Detection and Classification: A Dataset and Benchmark
A speech dataset, PodcastFillers, enables automatic detection and classification of filler words using a pipeline that combines VAD, ASR, and a classifier, outperforming keyword spotting methods.
- Year
- 2022
- Venue
- arXiv 2022
- Authors
- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2203.15135v2ARXIV-DEFAULT
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