Learning and extraction of violin instrumental controls from audio signal

MIRUM '12 Pub Date : 2012-11-02 DOI:10.1145/2390848.2390855
Alfonso Pérez, M. Wanderley
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引用次数: 12

Abstract

Acquisition of instrumental gestures in musical performances is an important task used in different fields ranging from acoustics and sound synthesis to motor learning or electroacoustic performances. The most common approach for acquiring gestures is by means of a sensing system. The direct measurement involves the use of usually expensive sensors with some degree of intrusivity and generally entails complex setups. Indirect acquisition is based on the processing of the audio signal and it is usually informed on acoustical or physical properties of the sound or sound production mechanism. In this paper we present an indirect acquisition method of violin controls from an audio signal based on learning of empirical data that is previously collected with a highly accurate sensing system. The learning consists of training of statistical models with a database of multimodal data from violin performances. The database includes audio spectral features and instrumental controls (bow tilt, bow force, bow velocity, bowing distance to the bridge and played string) and is designed to sample most part of the violin performance control space. We expect that once the indirect acquisition system is trained, no sensors should be required, so the indirect acquisition becomes a low-cost and non-intrusive acquisition method.
从音频信号中学习和提取小提琴乐器控制
从声学和声音合成到运动学习或电声表演,音乐表演中乐器手势的习得是一项重要的任务。获取手势最常见的方法是通过传感系统。直接测量涉及使用通常昂贵的传感器,具有一定程度的侵入性,通常需要复杂的设置。间接采集是基于音频信号的处理,它通常被告知声音的声学或物理性质或声音产生机制。在本文中,我们提出了一种间接获取小提琴控制的方法,该方法基于先前用高精度传感系统收集的经验数据的学习。学习包括用小提琴表演的多模态数据数据库训练统计模型。该数据库包括音频频谱特征和乐器控制(弓倾斜,弓力,弓速度,弓到桥和演奏弦的距离),旨在对小提琴演奏控制空间的大部分进行采样。我们预计,一旦间接采集系统训练完毕,就不需要传感器,因此间接采集成为一种低成本、非侵入式的采集方式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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