대한음성학회지:말소리 (MALSORI)
- 제62호
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- Pages.113-131
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- 2007
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- 1226-1173(pISSN)
강인한 음성 인식을 위한 탠덤 구조와 분절 특징의 결합
Combination Tandem Architecture with Segmental Features for Robust Speech Recognition
초록
It is reported that the segmental feature based recognition system shows better results than conventional feature based system in the previous studies. On the other hand, the various studies of combining neural network and hidden Markov models within a single system are done with expectations that it may potentially combine the advantages of both systems. With the influence of these studies, tandem approach was presented to use neural network as the classifier and hidden Markov models as the decoder. In this paper, we applied the trend information of segmental features to tandem architecture and used posterior probabilities, which are the output of neural network, as inputs of recognition system. The experiments are performed on Auroral database to examine the potentiality of the trend feature based tandem architecture. From the results, the proposed system outperforms on very low SNR environments. Consequently, we argue that the trend information on tandem architecture can be additionally used for traditional MFCC features.