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Main Authors: Jin, Xin, Zhou, Wu, Wang, Jingyu, Xu, Duo, Zheng, Yongsen
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.08300
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author Jin, Xin
Zhou, Wu
Wang, Jingyu
Xu, Duo
Zheng, Yongsen
author_facet Jin, Xin
Zhou, Wu
Wang, Jingyu
Xu, Duo
Zheng, Yongsen
contents Computational aesthetic evaluation has made remarkable contribution to visual art works, but its application to music is still rare. Currently, subjective evaluation is still the most effective form of evaluating artistic works. However, subjective evaluation of artistic works will consume a lot of human and material resources. The popular AI generated content (AIGC) tasks nowadays have flooded all industries, and music is no exception. While compared to music produced by humans, AI generated music still sounds mechanical, monotonous, and lacks aesthetic appeal. Due to the lack of music datasets with rating annotations, we have to choose traditional aesthetic equations to objectively measure the beauty of music. In order to improve the quality of AI music generation and further guide computer music production, synthesis, recommendation and other tasks, we use Birkhoff's aesthetic measure to design a aesthetic model, objectively measuring the aesthetic beauty of music, and form a recommendation list according to the aesthetic feeling of music. Experiments show that our objective aesthetic model and recommendation method are effective.
format Preprint
id arxiv_https___arxiv_org_abs_2402_08300
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle An Order-Complexity Aesthetic Assessment Model for Aesthetic-aware Music Recommendation
Jin, Xin
Zhou, Wu
Wang, Jingyu
Xu, Duo
Zheng, Yongsen
Computer Vision and Pattern Recognition
Computational aesthetic evaluation has made remarkable contribution to visual art works, but its application to music is still rare. Currently, subjective evaluation is still the most effective form of evaluating artistic works. However, subjective evaluation of artistic works will consume a lot of human and material resources. The popular AI generated content (AIGC) tasks nowadays have flooded all industries, and music is no exception. While compared to music produced by humans, AI generated music still sounds mechanical, monotonous, and lacks aesthetic appeal. Due to the lack of music datasets with rating annotations, we have to choose traditional aesthetic equations to objectively measure the beauty of music. In order to improve the quality of AI music generation and further guide computer music production, synthesis, recommendation and other tasks, we use Birkhoff's aesthetic measure to design a aesthetic model, objectively measuring the aesthetic beauty of music, and form a recommendation list according to the aesthetic feeling of music. Experiments show that our objective aesthetic model and recommendation method are effective.
title An Order-Complexity Aesthetic Assessment Model for Aesthetic-aware Music Recommendation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2402.08300