Evaluating the Performance of a Speech Recognition based System
Vinod Kumar Pandey, Sunil Kumar Kopparapu

TL;DR
This paper presents a cost-effective method to evaluate speech recognition systems by identifying performance issues through simulated testing, avoiding extensive real-user trials.
Contribution
The authors propose a novel evaluation approach that predicts system performance and bottlenecks without real user deployment, saving time and costs.
Findings
Method accurately predicts system performance before deployment
Identifies specific performance bottlenecks in speech solutions
Reduces evaluation time and expenses significantly
Abstract
Speech based solutions have taken center stage with growth in the services industry where there is a need to cater to a very large number of people from all strata of the society. While natural language speech interfaces are the talk in the research community, yet in practice, menu based speech solutions thrive. Typically in a menu based speech solution the user is required to respond by speaking from a closed set of words when prompted by the system. A sequence of human speech response to the IVR prompts results in the completion of a transaction. A transaction is deemed successful if the speech solution can correctly recognize all the spoken utterances of the user whenever prompted by the system. The usual mechanism to evaluate the performance of a speech solution is to do an extensive test of the system by putting it to actual people use and then evaluating the performance by…
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Taxonomy
MethodsWizard: Unsupervised goats tracking algorithm
