CLSDASMar 28, 2022

Filler Word Detection and Classification: A Dataset and Benchmark

arXiv:2203.15135v212 citationsh-index: 43
Originality Incremental advance
AI Analysis

This work addresses a tedious media editing task for podcast producers by providing a dataset and benchmark, but it is incremental as it builds on existing speech processing techniques.

The authors tackled the problem of automatically detecting and classifying filler words in speech by introducing a novel dataset, PodcastFillers, with 35K annotated filler words, and proposed a pipeline using VAD and ASR that achieved state-of-the-art results, strongly outperforming transcription-free approaches.

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.

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