The Importance of Hyperparameter Optimisation for Facial Recognition Applications
Hannah M Claus
[AAAI-22] Undergraduate Consortium
Abstract:
This paper explores the importance of using optimisation techniques when tuning a machine learning model. The hyperparameters that need to be determined for the Artificial Neural Network (ANN) to work most efficiently are supposed to find a value that achieves the highest recognition accuracy in a face recognition application. First, the model was trained with manual optimisation of the parameters. The highest recognition accuracy that could be achieved was 96.6% with a specific set of parameters used in the ANN. However, the error rate was at 30%, which was not optimal. After utilising Grid Search as the first automated tuning method for hyperparameters, the recognition accuracy rose to 96.9% and the error rate could be minimised to be less than 1%. Applying Random Search, a recognition accuracy of 98.1% could be achieved with the same error rate. Adding further optimisation to the results from Random Search resulted in receiving an accuracy of 98.2%. Hence, the accuracy of the facial recognition application could be increased by 1.6% by applying automated optimisation methods.
Furthermore, this paper will also deal with common issues in face recognition and focus on potential solutions.
Furthermore, this paper will also deal with common issues in face recognition and focus on potential solutions.
Sessions where this paper appears
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Poster Session 3
Fri, February 25 8:45 AM - 10:30 AM (+00:00)
Red 4
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Poster Session 6
Sat, February 26 8:45 AM - 10:30 AM (+00:00)
Red 4