CVLGMMSDASIVJun 23, 2020

Audeo: Audio Generation for a Silent Performance Video

arXiv:2006.14348v176 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of audio generation from visual cues for musicians and multimedia applications, representing an incremental step in exploring the plausibility of such transformations.

The researchers tackled the problem of generating music from silent piano performance videos, developing a system called Audeo that translates video frames into symbolic representations and synthesizes audio, achieving reasonable audio quality with high recognition precision by music identification software.

We present a novel system that gets as an input video frames of a musician playing the piano and generates the music for that video. Generation of music from visual cues is a challenging problem and it is not clear whether it is an attainable goal at all. Our main aim in this work is to explore the plausibility of such a transformation and to identify cues and components able to carry the association of sounds with visual events. To achieve the transformation we built a full pipeline named `\textit{Audeo}' containing three components. We first translate the video frames of the keyboard and the musician hand movements into raw mechanical musical symbolic representation Piano-Roll (Roll) for each video frame which represents the keys pressed at each time step. We then adapt the Roll to be amenable for audio synthesis by including temporal correlations. This step turns out to be critical for meaningful audio generation. As a last step, we implement Midi synthesizers to generate realistic music. \textit{Audeo} converts video to audio smoothly and clearly with only a few setup constraints. We evaluate \textit{Audeo} on `in the wild' piano performance videos and obtain that their generated music is of reasonable audio quality and can be successfully recognized with high precision by popular music identification software.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes