MMCLDec 18, 2018

Constrained speaker diarization of TV series based on visual patterns

arXiv:1812.07209v213 citations
Originality Incremental advance
AI Analysis

This addresses the problem of accurately identifying speakers in noisy fictional content for media analysis, but it is incremental.

The paper tackled speaker diarization in TV series by using visual patterns to constrain clustering, achieving improved performance over standard tools.

Speaker diarization, usually denoted as the ''who spoke when'' task, turns out to be particularly challenging when applied to fictional films, where many characters talk in various acoustic conditions (background music, sound effects...). Despite this acoustic variability , such movies exhibit specific visual patterns in the dialogue scenes. In this paper, we introduce a two-step method to achieve speaker diarization in TV series: a speaker diarization is first performed locally in the scenes detected as dialogues; then, the hypothesized local speakers are merged in a second agglomerative clustering process, with the constraint that speakers locally hypothesized to be distinct must not be assigned to the same cluster. The performances of our approach are compared to those obtained by standard speaker diarization tools applied to the same data.

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