Assessing the Speaker Recognition Performance of Naive Listeners Using Mechanical Turk
Abstract
In this paper we attempt to quantify the ability of naive listeners to perform speaker recognition in the context of the NIST evaluation task. We describe our protocol: a series of listening experiments using large numbers of naive listeners (432) on Amazon's Mechanical Turk that attempt to measure the ability of the average human listener to performance speaker recognition. Our goal was the compare the performance of the average human listener to both forensic experts and state-of-the-art automatic systems. We show that naive listeners vary substantially in their performance, but that a voting of listeners can achieve performance similar to that of expert forensic examiners.
Document Details
- Document Type
- Technical Report
- Publication Date
- Oct 25, 2010
- Accession Number
- ADA533887
Entities
People
- Derek Straub
- Joseph Campbell
- Reva Schwartz
- Wade Shen
Organizations
- Massachusetts Institute of Technology