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Book ChapterDOI

The ICSI RT07s Speaker Diarization System

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TLDR
The ICSI speaker diarization system as mentioned in this paper automatically performs both speaker segmentation and clustering without any prior knowledge of the identities or the number of speakers, using standard speech processing components and techniques such as HMMs, agglomerative clustering, and the Bayesian Information Criterion.
Abstract
In this paper, we present the ICSI speaker diarization system. This system was used in the 2007 National Institute of Standards and Technology (NIST) Rich Transcription evaluation. The ICSI system automatically performs both speaker segmentation and clustering without any prior knowledge of the identities or the number of speakers. Our system uses "standard" speech processing components and techniques such as HMMs, agglomerative clustering, and the Bayesian Information Criterion. However, we have developed the system with an eye towards robustness and ease of portability. Thus we have avoided the use of any sort of model that requires training on "outside" data and we have attempted to develop algorithms that require as little tuning as possible. The system is simular to last year's system [1] except for three aspects. We used the most recent available version of the beam-forming toolkit, we implemented a new speech/non-speech detector that does not require models trained on meeting data and we performed our development on a much larger set of recordings.

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Citations
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Proceedings ArticleDOI

Clustering initialization based on spatial information for speaker diarization of meetings

TL;DR: An initialization for an agglomerative system applied to speaker diarization in the meeting environment based on a previous clustering of the temporal sequence generated by the estimation of the Time Delay of Arrival among pair of sensors is proposed.
Book ChapterDOI

Exploring Convolutional Neural Networks for Voice Activity Detection

TL;DR: This technique indicates that using CNN on audio spectrogram images can be an efficient way for detecting voice even in extremely noisy audio signals.

Use of speaker location features in meeting diarization

TL;DR: This thesis proposes several improvements to the correlation-based location features recently used in meeting speaker diarization (answering the question, "Who spoke when?"), and develops a simple, nearest-neighbor overlap processing scheme which, when given accurate overlap detection, improves darization accuracy.
Journal ArticleDOI

A study of speaker clustering for speaker attribution in large telephone conversation datasets

TL;DR: This paper proposes an attribution system using complete-linkage clustering (CLC) without model retraining and shows that on top of the efficiency gained through elimination of the retraining phase, greater accuracy is achieved by utilizing the farthest-neighbor criterion inherent to CLC for both diarization and linking.
Proceedings ArticleDOI

APyCA: Towards the automatic subtitling of television content in Spanish

TL;DR: APyCA, the prototype system described in this paper, has been developed in an attempt to automate the process of subtitling television content in Spanish through the application of state-of-the-art speech and language technologies.
References
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Speaker, Environment and Channel Change Detection and Clustering via the Bayesian Information Criterion

S. Chen
TL;DR: The segmentation algorithm can successfully detect acoustic changes; the clustering algorithm can produce clusters with high purity, leading to improvements in accuracy through unsupervised adaptation as much as the ideal clustering by the true speaker identities.
Proceedings ArticleDOI

A robust speaker clustering algorithm

TL;DR: The algorithm automatically performs both speaker segmentation and clustering without any prior knowledge of the identities or the number of speakers and has the following advantages: no threshold adjustment requirements; no need for training/development data; and robustness to different data conditions.
Proceedings ArticleDOI

Approaches and applications of audio diarization

TL;DR: An overview of current audio diarization approaches is provided and performance and potential applications are discussed, as well as the performance of current systems as measured in the DARPA EARS Rich Transcription Fall 2004 (RT-04F) speaker diarized evaluation.
Journal ArticleDOI

Robust speaker change detection

TL;DR: In this article, the authors present a criterion which can be used to identify speaker changes in an audio stream without such tuning, which consists of calculating the log likelihood ratio (LLR) of two models with the same number of parameters.
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