基于深度学习长短期记忆的卡纳蒂克音乐自动转录系统

B. Gowrishankar, Nagappa U. Bhajantri
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引用次数: 5

摘要

自动音乐转录使用计算算法将音乐音频转换为某种形式的音乐符号。自动音乐转录对于音乐混音、歌曲推荐和音乐信息检索等应用非常重要。这是一项涉及信号处理和人工智能领域的具有挑战性的任务。虽然西方音乐的自动转写作品很多,但是印度古典音乐,尤其是卡纳蒂克音乐的自动转写作品却很少。自动音乐转录卡纳蒂克音乐是非常具有挑战性的,由于变化的swars/音符频率。由于这些变化,它变得难以检测和转录的音乐。在这项工作中,提出了一种基于深度学习LSTM的卡纳蒂克音乐自动转录系统。使用改进的视觉几何群网络(VGGNet)将注释检测作为图像分类问题加以解决。使用LSTM分类器将音符序列分为72个Melakartha ragas,与现有方法相比,它提供了更好的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Long Short-Term Memory based Automatic Music Transcription System for Carnatic Music
Automatic music transcription uses computational algorithms to covert a music audio into some form of music notation. Automatic music transcription is very important for applications like music mixing, song recommendation and music information retrieval. It is a challenging task involving the domains of signal processing and artificial intelligence. Though there are many works on automatic music transcription for western music, there are very few works for automatic music transcription for Indian classical music, especially Carnatic music. Automatic music transcription for Carnatic music is very challenging due to variations in the swars/note frequencies. Due to the variations, it becomes difficult to detect the Raga and transcribe the music. In this work, a deep learning LSTM based automatic music transcription system is proposed for Carnatic music. The note detection is solved as the image classification problem using a modified Visual Geometry Group Network (VGGNet). The sequence of notes is classified into 72 Melakartha ragas using an LSTM classifier and provides better accuracy when compared to existing methods.
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