Abstract

Current facial recognition systems are still far away from the capability of the human’s face perception. Facial recognition systems can continue to be improved as technology evolves. The task of face recognition has been heavily explored in recent years. In this research, we provide our initial idea in developing Lightweight Deep Neural Networks for facial recognition. Although our goal was to create an optimal model that would exceed current facial recognition model performance, we could experiment and discover alternative approaches to multi-class facial recognition/classification. We tested with a dataset of 2800 images of men and women with specified image sizes. We created three CNN with various architectures, which we used to train with the chosen dataset for 20, 50, 100, and 200 classes per model. The experimental results exhibit the challenges of increasing the complexity of neural networks. From these results, we concluded that a Light CNN Model with a small number of layers had an average test accuracy of 94.19%, which was the best classification performance on unseen data.

Highlights

  • The human face is a unique social identifier in our world

  • One of the most well-known implementations of facial recognition came in November 2017, when Apple released the iPhone X, which showcased their new "FaceID" feature

  • At the time of the release of FaceID on the iPhone X, 44.2% of Americans owned an iPhone, and since that percentage has grown to nearly 47% [7]

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Summary

Introduction

The human face is a unique social identifier in our world. The distinctiveness of a human’s face is a significant contributor to the concept of individuality. Marriott has been developing a check-in software for their hotels that uses facial recognition technology to decrease the average check-in time by up to 66% [3]. Since 2017, Caliburger has offered a personalized experience with its facial recognition kiosks These kiosks scan the customer’s face, bringing up their user profile. FaceID is Apple’s facial recognition software that allows users to unlock their phone, make purchases in the app store, use the Apple Pay feature, and much more, all using only their face [6]. At the time of the release of FaceID on the iPhone X, 44.2% of Americans owned an iPhone, and since that percentage has grown to nearly 47% [7] This implementation is responsible for exposing millions of people worldwide to the growing technology of facial recognition. Whether it’s for security purposes or a method for increasing customer engagement, facial recognition is starting to become a standard in society

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