TL;DR
SeqLight is a hierarchical deep learning framework that automates multi-light stage lighting control from music, utilizing imitation learning to adapt across venues without professional demonstrations.
Contribution
The paper introduces SeqLight, a novel multi-light control system using imitation learning and a goal-conditioned MDP, enabling flexible adaptation across diverse venues.
Findings
Effective multi-light control from music demonstrated.
Model generalizes well across different venue configurations.
Human studies validate the quality of automatic lighting control.
Abstract
Music-inspired Automatic Stage Lighting Control (ASLC) has gained increasing attention in recent years due to the substantial time and financial costs associated with hiring and training professional lighting engineers. However, existing methods suffer from several notable limitations: the low interpretability of rule-based approaches, the restriction to single-primary-light control in music-to-color-space methods, and the limited transferability of music-to-controlling-parameter frameworks. To address these gaps, we propose SeqLight, a hierarchical deep learning framework that maps music to multi-light Hue-Saturation-Value (HSV) space. Our approach first customizes SkipBART, an end-to-end single primary light generation model, to predict the full light color distribution for each frame, followed by hybrid Imitation Learning (IL) techniques to derive an effective decomposition strategy…
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