A secured deep learning based smart home automation system

Chitukula Sanjay, Konda Jahnavi, Shyam Karanth
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Abstract

With the expansion of modern technologies and the Internet of Things (IoT), the concept of smart homes has gained tremendous popularity with a view to making people’s lives easier by ensuring a secured environment. Several home automation systems have been developed to report suspicious activities by capturing the movements of residents. However, these systems are associated with challenges such as weak security, lack of interoperability and integration with IoT devices, timely reporting of suspicious movements, etc. Therefore, the given paper proposes a novel smart home automation framework for controlling home appliances by integrating with sensors, IoT devices, and microcontrollers, which would in turn monitor the movements and send notifications about suspicious movements on the resident’s smartphone. The proposed framework makes use of convolutional neural networks (CNNs) for motion detection and classification based on pre-processing of images. The images related to the movements of residents are captured by a spy camera installed in the system. It helps in identification of outsiders based on differentiation of motion patterns. The performance of the framework is compared with existing deep learning models used in recent studies based on evaluation metrics such as accuracy (%), precision (%), recall (%), and f-1 measure (%). The results show that the proposed framework attains the highest accuracy (98.67%), thereby surpassing the existing deep learning models used in smart home automation systems.

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基于深度学习的安全智能家居自动化系统
随着现代技术和物联网(IoT)的发展,智能家居的概念得到了极大的普及,其目的是通过确保安全的环境让人们的生活更轻松。目前已开发出几种家庭自动化系统,通过捕捉住户的动向来报告可疑活动。然而,这些系统都面临着一些挑战,如安全性薄弱、缺乏与物联网设备的互操作性和集成性、不能及时报告可疑活动等。因此,本文提出了一种新颖的智能家居自动化框架,通过与传感器、物联网设备和微控制器的集成来控制家用电器,进而监控住户的动向,并将可疑动向通知发送到住户的智能手机上。拟议的框架利用卷积神经网络(CNN)进行运动检测,并在图像预处理的基础上进行分类。与居民动向相关的图像由系统中安装的间谍摄像头捕捉。它有助于根据运动模式的差异来识别外来者。根据准确率(%)、精确率(%)、召回率(%)和 f-1 测量值(%)等评估指标,将该框架的性能与近期研究中使用的现有深度学习模型进行了比较。结果表明,所提出的框架达到了最高的准确率(98.67%),从而超越了智能家居自动化系统中使用的现有深度学习模型。
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