Su A Y, Liang Sheng-Fu
Dept. of CSIE, Nat. Cheng Kung Univ., Tainan, Taiwan.
IEEE Trans Neural Netw. 2002;13(5):1137-48. doi: 10.1109/TNN.2002.1031945.
A new approach is proposed that closely synthesizes tones of plucked string instruments by using a class of physical modeling recurrent networks. The strategies employed consist of a fast training algorithm and a multistage training procedure that are able to obtain the synthesis parameters for a specific instrument automatically. The training vector can be recorded tones of most target plucked instruments with ordinary microphones. The proposed approach delivers encouraging results when it is applied to different types of plucked string instruments such as steel-string guitar, nylon-string guitar, harp, Chin, Yueh-chin, and Pipa. The synthesized tones sound very close to the originals produced by their acoustic counterparts. In addition, the paper presents an embedded technique that can produce special effects such as vibrato and portamento that are vital to the playing of plucked-string instruments. The computation required in the resynthesis processing is also reasonable.
提出了一种新方法,通过使用一类物理建模递归网络来紧密合成拨弦乐器的音调。所采用的策略包括一种快速训练算法和一个多阶段训练过程,能够自动获取特定乐器的合成参数。训练向量可以用普通麦克风录制大多数目标拨弦乐器的音调。当将该方法应用于不同类型的拨弦乐器,如钢弦吉他、尼龙弦吉他、竖琴、月琴、阮和琵琶时,能得到令人鼓舞的结果。合成的音调听起来与原声乐器产生的原声非常接近。此外,本文还提出了一种嵌入式技术,该技术可以产生对拨弦乐器演奏至关重要的颤音和滑音等特殊效果。重新合成处理所需的计算量也是合理的。