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A Novel Singing Voice Separation Method Based on a Learnable Decomposition Technique

机译:一种基于学习分解技术的新型歌唱语音分离方法

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摘要

In this paper, a new monaural singing voice separation algorithm is presented. This field of signal processing provides important information in many areas dealing with voice recognition, data retrieval, and singer identification. The proposed approach includes a sparse and low-rank decomposition model using spectrogram of the singing voice signals. The vocal and non-vocal parts of a singing voice signal are investigated as sparse and low-rank components, respectively. An alternating optimization algorithm is applied to decompose the singing voice frames using the sparse representation technique over the vocal and non-vocal dictionaries. Also, a novel voice activity detector is presented based upon the energy of the sparse coefficients to learn atoms related to the non-vocal data in the training step. In the test phase, the learned non-vocal atoms of the music instrumental part are updated according to the non-vocal components captured from the test signal using domain adaptation technique. The proposed dictionary learning process includes two coherence measures: atom-data coherence and mutual coherence to provide a learning procedure with low reconstruction error along with a proper separation in the test step. The simulation results using different measures show that the proposed method leads to significantly better results in comparison with the earlier methods in this context and the traditional procedures.
机译:本文提出了一种新的单声道歌唱语音分离算法。该信号处理领域在处理语音识别,数据检索和歌手识别的许多领域提供重要信息。所提出的方法包括使用歌唱语音信号的频谱图的稀疏和低秩分解模型。唱歌语音信号的声音和非声音分别被研究分别为稀疏和低秩分量。应用交替优化算法来使用声音和非声音词典中的稀疏表示技术分解唱歌语音帧。此外,基于稀疏系数的能量来呈现一种新颖的语音活动检测器,以学习与训练步骤中的非声音数据相关的原子。在测试阶段,根据使用域自适应技术从测试信号捕获的非声音组件更新音乐器械部分的学习的非声音原子。所提出的字典学习过程包括两个相干措施:原子数据一致性和相互一致性,以提供低重建误差的学习过程以及测试步骤中的适当分离。使用不同措施的仿真结果表明,与此背景下的早期方法和传统程序相比,所提出的方法导致显着更好的结果。

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