A New Smart Home Intruder Detection System Based on Deep Learning

Hiba Hameed Ali, Jolan Rokan Naif, Waleed Rasheed Humood
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Abstract

The security of home doors has become one of the necessities in this era. The Internet of Things (IoT) technology has also entered into building the smart home. Therefore, it has become necessary to develop a facial recognition system that can be implemented on IoT devices. This study presented a method to recognize faces using the efficientnet-b4. Transfer learning with fine-tuning was used here due to the small dataset size and high accuracy (accuracy of Top-1= 82.9% and accuracy of Top-5 = 96.4%) of EfficientNet-B4 and it has fewer parameters (19.5 M) than the previously known model and this is what we are looking for in order to implement it on the Raspberry Pi. After training and saving the model, it is converted into a lightweight model and transferred to the Raspberry to distinguish faces. The results showed that the model had an accuracy of 97%, despite the fact that the collected images were taken in different lighting, different places, and different facial expressions.
一种基于深度学习的智能家居入侵者检测系统
安全的家居门已经成为这个时代的必需品之一。物联网(IoT)技术也进入了智能家居的建设。因此,有必要开发一种可以在物联网设备上实施的面部识别系统。本研究提出了一种基于高效率的人脸识别方法。这里使用了带有微调的迁移学习,因为高效网- b4的数据集规模小,精度高(Top-1的精度= 82.9%,Top-5的精度= 96.4%),而且它比以前已知的模型参数更少(19.5 M),这就是我们正在寻找的,以便在树莓派上实现它。经过训练并保存模型后,将其转换为轻量级模型,并转移到Raspberry中进行人脸识别。结果表明,尽管所收集的图像是在不同的光线、不同的地点和不同的面部表情下拍摄的,但该模型的准确率为97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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