Voice Identification Management correctly attributes the same individual across multiple spoken languages and dialects and is robust for wide variations in audio quality.
Voice Identification Management is deployable prior to, alongside, or post Relativity processing.
Voice Identification Management provides a matrix of names linked to processed recordings in extracted metadata style for upload into Relativity or any downstream Trial Preparation platforms.
Review and analyse voice recordings as a single phase exercise, rather than moving back and forth across the case timeline as additional instances where a particular speaker is present on calls are identified by human review.
Where an unknown John or Jane Doe is encountered and the contents of the conversation mean any other recordings where they also feature might be of interest, that set of recordings can be rapidly determined and then reviewed.
Based on a CNN/RNN neural networking system with hierarchical clustering, and focusing on how a body generates sound, it is agnostic of languages and dialects spoken.
Intelligent Voice Identification Management can be deployed edge, data center, or private AWS or Azure, utilizing either CPU or GPU resources.
Reach out to us with any questions you may have or to discuss next steps.