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Automatic detection of musicians' ancillary gestures based on video analysis

机译:基于视频分析自动检测音乐家的辅助手势

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摘要

A novel approach for the detection of ancillary gestures produced by clarinetists during musical performances is presented in this paper. Ancillary gestures, also known as non-obvious or accompanist gestures are produced spontaneously by musicians during their performances and do not have meaning in sound, but they help in the creation of music. The proposed approach consists in detecting, segmenting and tracking points of interest and parts of the musician body in video scenes to further analyze if the movement associated to these points of interest or body parts could be related to ancillary gestures. In particular, we tackle the problem of detecting the three most commonly seen ancillary gestures of this class of musicians: clarinet bell moving up and down, bending of the knees and shoulder curvature. In this paper we show that the optical flux algorithm for tracking a point of interest at the bottom of the clarinet bell and the projection profile algorithm for analyzing the knees and the shoulder regions are effective in detecting ancillary movements related to the clarinet, knee movement and body curvature respectively. These techniques were evaluated with respect to the precision and recall in detecting ancillary gestures on 12,423 video frames of nine clarinetists' presentations recorded in a studio. The experimental results have shown that the precision in detecting ancillary gestures varies between 78.4% and 92.8%, while the recall varies between 85.3% and 95.5%. These results also imply that any further analysis of the videos by specialists could focus on less than 500 frames which represents a reduction of more than 99% in the workload.
机译:本文提出了一种新的方法来检测单簧管演奏者在音乐表演过程中产生的辅助手势。辅助手势,也称为非明显或伴奏手势,是音乐家在演奏过程中自发产生的,虽然在声音上没有意义,但有助于音乐创作。所提出的方法包括在视频场景中检测,分割和跟踪兴趣点和音乐家身体的部位,以进一步分析与这些兴趣点或身体部位相关的运动是否可能与辅助手势相关。特别是,我们解决了检测此类音乐家最常见的三个辅助手势的问题:单簧管铃铛上下移动,膝盖弯曲和肩膀弯曲。在本文中,我们表明,用于跟踪单簧管钟声底部兴趣点的光通量算法和用于分析膝盖和肩膀区域的投影轮廓算法在检测与单簧管有关的辅助运动,膝盖运动和身体弯曲。对这些技术进行了评估,其准确性和召回率是在工作室中录制的9个单簧管演示文稿的12423个视频帧中检测辅助手势时进行的。实验结果表明,辅助手势的检测精度介于78.4%和92.8%之间,而召回率介于85.3%和95.5%之间。这些结果还暗示,由专家对视频进行的任何进一步分析都可以集中于少于500帧,这意味着工作量减少了99%以上。

著录项

  • 来源
    《Expert Systems with Application 》 |2014年第2期| 2098-2106| 共9页
  • 作者单位

    Federal University of Parana, Department of Electrical Engineering, Centra Politecnico, CP19011, Curitiba, PR 81531-970, Brazil;

    McGill University, Centre for Interdisciplinary Research in Music Media and Technology, Schulich School of Music, 555 Sherbrooke West H3A 1E3, Montreal, QC, Canada;

    Federal University of Parana, Department of Electrical Engineering, Centra Politecnico, CP19011, Curitiba, PR 81531-970, Brazil,Pontifical Catholic University of Parana, Postgraduate Program in Computer Science, R. Imaculada Conceicao, 1155, Curitiba, PR 80215-901, Brazil;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Gestures; Music expression; Video analysis; Image processing;

    机译:手势;音乐表达;视频分析;图像处理;

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