Title :
Noisy speech recognition failure diagnosis using Minimum Message Length decision trees
Author :
Cernak, Milos ; Darjaa, Sakhia
Author_Institution :
Inst. of Inf., Slovak Acad. of Sci., Bratislava
Abstract :
Current ASR technology lacks of effective failure diagnosis of ASR systems. Figures of merits such as WER are very useful, but donpsilat bring much insight into error patterns, error predictions or error analysis of ASR output. This paper explores an application of minimum message length (MML) style decision trees for such a diagnosis, focusing on theoretical background and the failure diagnosis of noisy speech recognition. In addition, the paper focuses on failure diagnosis of noisy speech, covering several kinds of intrinsic speech variabilities as well. Results on added speech-shaped noise at different SNR, ranging from 25 dB to -10 dB, are presented.
Keywords :
decision trees; fault diagnosis; speech recognition; system recovery; error analysis; minimum message length; minimum message length decision trees; speech recognition failure diagnosis; Automatic speech recognition; Decision trees; Electronic mail; Encoding; Humans; Informatics; Loudspeakers; Machine learning; Speech analysis; Speech recognition; Automatic speech recognition; decision trees; failure diagnosis; machine learning;
Conference_Titel :
Systems, Signals and Image Processing, 2008. IWSSIP 2008. 15th International Conference on
Conference_Location :
Bratislava
Print_ISBN :
978-80-227-2856-0
Electronic_ISBN :
978-80-227-2880-5
DOI :
10.1109/IWSSIP.2008.4604453