Looking to Listen at the Cocktail Party: A Speaker-Independent Audio-Visual Model for Speech Separation
This work addresses the challenge of speech separation in noisy environments like interviews or bars, enabling users to isolate speech from specific individuals in videos, though it builds incrementally on existing audio-visual approaches.
The authors tackled the problem of isolating a single speech signal from a mixture of sounds, such as other speakers and background noise, by developing a joint audio-visual model that uses visual features to focus on desired speakers. Their method, which is speaker-independent and trained on a new dataset called AVSpeech, shows clear advantages over state-of-the-art audio-only separation and outperforms recent speaker-dependent audio-visual methods.
We present a joint audio-visual model for isolating a single speech signal from a mixture of sounds such as other speakers and background noise. Solving this task using only audio as input is extremely challenging and does not provide an association of the separated speech signals with speakers in the video. In this paper, we present a deep network-based model that incorporates both visual and auditory signals to solve this task. The visual features are used to "focus" the audio on desired speakers in a scene and to improve the speech separation quality. To train our joint audio-visual model, we introduce AVSpeech, a new dataset comprised of thousands of hours of video segments from the Web. We demonstrate the applicability of our method to classic speech separation tasks, as well as real-world scenarios involving heated interviews, noisy bars, and screaming children, only requiring the user to specify the face of the person in the video whose speech they want to isolate. Our method shows clear advantage over state-of-the-art audio-only speech separation in cases of mixed speech. In addition, our model, which is speaker-independent (trained once, applicable to any speaker), produces better results than recent audio-visual speech separation methods that are speaker-dependent (require training a separate model for each speaker of interest).