通过多模态信号处理的机器学习

K. Kokkinidis, Athanasia Stergiaki, A. Tsagaris
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引用次数: 0

摘要

本文提出了一种基于多模态信号处理的声乐(拜占庭音乐)识别方法。从专家(教师)和学生的赞美诗表演中分别捕捉到一系列多模态信号。机器学习系统使用从捕获的多模态信号中提取的特定特征值进行训练。在系统被训练之后,它就能够从语料库中识别出任何赞美诗的表演。通过利用机器学习技术实时进行培训和识别。采用交叉验证统计方法对该系统进行了评价,取得了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning via multimodal signal processing
This paper proposes a methodology for recognition of vocal music (Byzantine music) via multi-modal signals processing. A sequence of multi-modal signals is captured from the expert's (teacher) and student's hymns performances, respectively. The machine learning system is trained using the values of particular features which are extracted from the captured multi-modal signals. After the system is being trained then it becomes able to recognize any hymn performance from the corpus. Training and recognition takes place in real time by utilizing machine learning techniques. The evaluation of the system was carried out with the cross - validation statistical method Jackknife, giving promising results.
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