Automatic Melody Harmonization with Triad Chords: A Comparative Study
@article{Yeh2020AutomaticMH, title={Automatic Melody Harmonization with Triad Chords: A Comparative Study}, author={Yin-Cheng Yeh and Wen-Yi Hsiao and Satoru Fukayama and T. Kitahara and Benjamin Genchel and Hao-Min Liu and Hao-Wen Dong and Y. Chen and Terence Leong and Y. Yang}, journal={ArXiv}, year={2020}, volume={abs/2001.02360} }
Several prior works have proposed various methods for the task of automatic melody harmonization, in which a model aims to generate a sequence of chords to serve as the harmonic accompaniment of a given multiple-bar melody sequence. In this paper, we present a comparative study evaluating and comparing the performance of a set of canonical approaches to this task, including a template matching based model, a hidden Markov based model, a genetic algorithm based model, and two deep learning based… CONTINUE READING
Figures, Tables, and Topics from this paper
2 Citations
Melody Harmonization Using Orderless NADE, Chord Balancing, and Blocked Gibbs Sampling
- Computer Science, Engineering
- ArXiv
- 2020
- Highly Influenced
- PDF
A Comprehensive Survey on Deep Music Generation: Multi-level Representations, Algorithms, Evaluations, and Future Directions
- Computer Science, Engineering
- ArXiv
- 2020
- Highly Influenced
- PDF
References
SHOWING 1-10 OF 34 REFERENCES
Chord Generation from Symbolic Melody Using BLSTM Networks
- Computer Science, Engineering
- ISMIR
- 2017
- 23
- Highly Influential
- PDF
Functional Harmony Recognition of Symbolic Music Data with Multi-task Recurrent Neural Networks
- Computer Science
- ISMIR
- 2018
- 13
- PDF
Function- and Rhythm-Aware Melody Harmonization Based on Tree-Structured Parsing and Split-Merge Sampling of Chord Sequences
- Computer Science
- ISMIR
- 2017
- 7
- PDF
An Information Theoretic Approach to Chord Categorization and Functional Harmony
- Computer Science
- 2015
- 13
- PDF
JamSketch: Improvisation Support System with GA-Based Melody Creation from User's Drawing
- Computer Science
- CMMR
- 2017
- 5
- PDF