首页> 外文会议>Iranian Conference on Signal Processing and Intelligent Systems >A Singing Voice Separation Method from Persian Music Based on Pitch Detection Methods
【24h】

A Singing Voice Separation Method from Persian Music Based on Pitch Detection Methods

机译:基于俯仰检测方法的波斯音乐唱歌语音分离方法

获取原文

摘要

Singing voice separation algorithms have many applications, such as recognizing the lyrics, identifying the singer, and retrieving the music data. Due to its complexity and special rules, the traditional music and the voice of Iranian singers have caused the lack of sufficient research in this field. However, in western music, due to the relatively simple structure of the sounds, it has made it possible for researchers can easily do segmentation based on the recognition of its kind, using the characteristics like the number of uttered words and the recognition of the pitches. In this research, an algorithm is presented for the separation of the singing voice from the music through the recognition of the pitches and based on the characteristic-based method. First, at the stage of recognizing the song’s vocal by segmentation of the speech signal, the input is classified into vocal and non-vocal parts. Then music is recognized from the vocal using the pitch criterion and the characteristics of the ceptral coefficients. Finally, the stage of the separation from the pitch is done and is used for the classification. In this research, an automatic and effective method is presented. In the proposed method, based on the extracted characteristics and the frequency distances in segmented parts, the pitch of the singer’s voice and the process of the separation from the music is done with acceptable accuracy. The quantitative results of this research demonstrate the success of the separation system by the presented method. The precision of the proposed method using a combination of characteristics and the Shuffled frog-leaping algorithm’s metaheuristic algorithm is about 94%. The precision of the proposed method using the dimension reduction through MLP neural system demonstrates is 90%.
机译:唱歌语音分离算法有许多应用,例如识别歌词,识别歌手,以及检索音乐数据。由于其复杂性和特殊规则,传统的音乐和伊朗歌手的声音导致这一领域缺乏足够的研究。然而,在西方音乐中,由于声音的结构相对简单,它使研究人员可以轻松地基于对其种类的识别来轻松进行分段,使用像说话的单词数量的特征和音高的识别。在该研究中,呈现一种算法,用于通过识别音调并基于基于特征的方法来分离唱歌语音从音乐分离。首先,在通过演讲信号的分割识别歌曲声音的阶段,输入被分类为声乐和非声音部分。然后使用音高标准和钉牛系数的特征从声乐中识别音乐。最后,从间距分离的阶段完成并用于分类。在本研究中,提出了一种自动和有效的方法。在所提出的方法中,基于所提取的特性和分段部分中的频率距离,通过可接受的精度完成歌手语音的音调和与音乐分离的过程。该研究的定量结果证明了分离系统的成功通过呈现的方法。使用特性和混合青蛙跨越算法的成群质算法的组合的提出方法的精度约为94%。使用MLP神经系统的尺寸减少的所提出的方法的精度表明是90%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号