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Compressed Sensing based Speech Compression using Dictionary Learning and IRLS algorithm

机译:使用字典学习和IRLS算法的基于压缩感知的语音压缩

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Compressed sensing (CS) has gained much interests in the speech processing community and especially in compression. The success of this appealing paradigm relies, heavily, on the sparsity of speech signals in a given dictionary. Thanks to machine learning, it is possible to go beyond the limits of analytical dictionaries by designing learned dictionaries, which are more able to fit the nature of data. In this paper, we propose speech compression scheme based on CS using K-singular value decomposition (K-SVD) algorithm to learn a dictionary for sparse representation and iteratively reweighted least square (IRLS) algorithm for signal reconstruction from randomly generated measurements. Different sizes of dictionaries are trained and compared with discrete cosine transform (DCT). Signal quality results, measured with perceptual evaluation speech quality (PESQ) revealed that learned dictionary using K-SVD improves the performance of speech compressed sensing comparing to DCT.
机译:压缩感知(CS)在语音处理领域尤其是压缩方面引起了广泛的兴趣。这种吸引人的范例的成功很大程度上取决于给定词典中语音信号的稀疏性。借助机器学习,可以通过设计学习的字典来超越分析字典的范围,这些字典更适合数据的性质。在本文中,我们提出了一种基于CS的语音压缩方案,该方案使用K奇异值分解(K-SVD)算法来学习字典来表示稀疏表示,并使用迭代重加权最小二乘(IRLS)算法从随机生成的测量结果中重建信号。训练了不同大小的字典,并与离散余弦变换(DCT)进行了比较。用感知评估语音质量(PESQ)测量的信号质量结果显示,与DCT相比,使用K-SVD的学习词典可提高语音压缩感知的性能。

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