论文标题
音乐性能评估的得分信息网络
Score-informed Networks for Music Performance Assessment
论文作者
论文摘要
在大多数情况下,对音乐表演的评估都考虑到正在执行的基本乐谱。尽管基于性能音频和分数提取的功能,已经采用了几种自动方法来进行客观音乐性能评估(MPA),但尚未研究将分数信息纳入MPA模型的深度神经网络方法。在本文中,我们介绍了三种能够得分绩效评估的不同模型。 These are (i) a convolutional neural network that utilizes a simple time-series input comprising of aligned pitch contours and score, (ii) a joint embedding model which learns a joint latent space for pitch contours and scores, and (iii) a distance matrix-based convolutional neural network which utilizes patterns in the distance matrix between pitch contours and musical score to predict assessment ratings.我们的结果提供了对不同体系结构和输入表示形式的适用性的见解,并证明了与无关分数模型相比,分数信息模型的好处。
The assessment of music performances in most cases takes into account the underlying musical score being performed. While there have been several automatic approaches for objective music performance assessment (MPA) based on extracted features from both the performance audio and the score, deep neural network-based methods incorporating score information into MPA models have not yet been investigated. In this paper, we introduce three different models capable of score-informed performance assessment. These are (i) a convolutional neural network that utilizes a simple time-series input comprising of aligned pitch contours and score, (ii) a joint embedding model which learns a joint latent space for pitch contours and scores, and (iii) a distance matrix-based convolutional neural network which utilizes patterns in the distance matrix between pitch contours and musical score to predict assessment ratings. Our results provide insights into the suitability of different architectures and input representations and demonstrate the benefits of score-informed models as compared to score-independent models.