Score: 0

The ICASSP 2026 Automatic Song Aesthetics Evaluation Challenge

Published: January 12, 2026 | arXiv ID: 2601.07237v1

By: Guobin Ma , Yuxuan Xia , Jixun Yao and more

This paper summarizes the ICASSP 2026 Automatic Song Aesthetics Evaluation (ASAE) Challenge, which focuses on predicting the subjective aesthetic scores of AI-generated songs. The challenge consists of two tracks: Track 1 targets the prediction of the overall musicality score, while Track 2 focuses on predicting five fine-grained aesthetic scores. The challenge attracted strong interest from the research community and received numerous submissions from both academia and industry. Top-performing systems significantly surpassed the official baseline, demonstrating substantial progress in aligning objective metrics with human aesthetic preferences. The outcomes establish a standardized benchmark and advance human-aligned evaluation methodologies for modern music generation systems.

Category
Electrical Engineering and Systems Science:
Audio and Speech Processing