One Dictionary vs. Two Dictionaries in Sparse Coding Based Denoising |
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Authors: | XIE Yining HUANG Jinjie HE Yongjun |
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Affiliation: | Harbin University of Science and Technology, Harbin 150080, China |
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Abstract: | As a promising technique, sparse coding can be widely used for representation, compression, de-noising and separation of signals. This technique has been introduced into noisy speech processing, where enhancing speech itself or speech feature remains a challenge. Unlike other fields where noises are dense, the noises in speech are often sparse or partly sparse over the speech dictionary, re-sulting in performance degradation. It is necessary to un-derstand the noise conditions of speech environments and the applied range of sparse coding. This paper analyzes the assumptions of sparse coding and provides the bounds of reconstruction error for two sparse coding methods which are widely used. Based on this analysis, the performance of the two methods under different conditions are com-pared. The results show that the performance of sparse coding can be improved by a well-prepared noise dictio-nary. Experiments on speech enhancement and recognition are conducted, and the results coincide with the theoretical analysis well. |
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Keywords: | Sparse representation Speech denoising Speech processing Speech recognition |
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