An image of U.N. Secretary-General Ban Ki-moon listening to a translation device
U.N. Secretary-General Ban Ki-moon
EMILIO MORENATTI/AP

Artificial Intelligence / Machine Learning

Google’s AI can now translate your speech while keeping your voice

Researchers trained a neural network to map audio “voiceprints” from one language to another.

May 20, 2019
An image of U.N. Secretary-General Ban Ki-moon listening to a translation device
U.N. Secretary-General Ban Ki-moon
EMILIO MORENATTI/AP

Listen to this Spanish audio clip.

This is how its English translation might sound when put through a traditional automated translation system.

Now this is how it sounds when put through Google’s new automated translation system.

The results aren’t perfect, but you can sort of hear how Google’s translator was able to retain the voice and tone of the original speaker. It can do this because it converts audio input directly to audio output without any intermediary steps. In contrast, traditional translational systems convert audio into text, translate the text, and then resynthesize the audio, losing the characteristics of the original voice along the way.

The new system, dubbed the Translatotron, has three components, all of which look at the speaker’s audio spectrogram—a visual snapshot of the frequencies used when the sound is playing, often called a voiceprint.  The first component uses a neural network trained to map the audio spectrogram in the input language to the audio spectrogram in the output language. The second converts the spectrogram into an audio wave that can be played. The third component can then layer the original speaker’s vocal characteristics back into the final audio output.

Not only does this approach produce more nuanced translations by retaining important nonverbal cues, but in theory it should also minimize translation error, because it reduces the task to fewer steps.

Translatotron is currently a proof of concept. During testing, the researchers trialed the system only with Spanish-to-English translation, which already took a lot of carefully curated training data. But audio outputs like the clip above demonstrate the potential for a commercial system later down the line. You can listen to more of them here.