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MERP:一个带有情感评级和评级者信息的音乐数据集。

MERP: A Music Dataset with Emotion Ratings and Raters' Profile Information.

机构信息

Information Systems Technology and Design Pillar, Singapore University of Technology and Design, Singapore 487372, Singapore.

Yong Siew Toh Conservatory of Music, National University Singapore, Singapore 117376, Singapore.

出版信息

Sensors (Basel). 2022 Dec 29;23(1):382. doi: 10.3390/s23010382.

Abstract

Music is capable of conveying many emotions. The level and type of emotion of the music perceived by a listener, however, is highly subjective. In this study, we present the Music Emotion Recognition with Profile information dataset (MERP). This database was collected through Amazon Mechanical Turk (MTurk) and features dynamical valence and arousal ratings of 54 selected full-length songs. The dataset contains music features, as well as user profile information of the annotators. The songs were selected from the Free Music Archive using an innovative method (a Triple Neural Network with the OpenSmile toolkit) to identify 50 songs with the most distinctive emotions. Specifically, the songs were chosen to fully cover the four quadrants of the valence-arousal space. Four additional songs were selected from the DEAM dataset to act as a benchmark in this study and filter out low quality ratings. A total of 452 participants participated in annotating the dataset, with 277 participants remaining after thoroughly cleaning the dataset. Their demographic information, listening preferences, and musical background were recorded. We offer an extensive analysis of the resulting dataset, together with a baseline emotion prediction model based on a fully connected model and an LSTM model, for our newly proposed MERP dataset.

摘要

音乐能够传达许多情感。然而,听众感知到的音乐的情绪水平和类型是高度主观的。在本研究中,我们提出了带有个人资料信息的音乐情感识别数据集(MERP)。该数据库是通过亚马逊 Mechanical Turk(MTurk)收集的,包含 54 首精选全长歌曲的动态效价和唤醒度评分。该数据集包含音乐特征以及注释者的用户个人资料信息。使用创新方法(带有 OpenSmile 工具包的三重神经网络)从免费音乐档案库中选择歌曲,以识别 50 首最具特色的歌曲。具体来说,选择这些歌曲是为了充分覆盖效价唤醒空间的四个象限。从 DEAM 数据集选择了另外四首歌曲作为本研究的基准,并过滤了低质量的评分。共有 452 名参与者参与了数据集的注释,经过彻底清理数据集后,有 277 名参与者保留下来。记录了他们的人口统计信息、听力偏好和音乐背景。我们对生成的数据集进行了广泛的分析,并为我们新提出的 MERP 数据集提供了基于全连接模型和 LSTM 模型的基线情感预测模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/392b/9824842/25c68a559781/sensors-23-00382-g001.jpg

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