Enhanced Intelligent Smart Home Control and Security System Based on Deep Learning Model

Olutosin Taiwo, Ezugwu E. Absalom, O. N. Oyelade, M. Almutairi
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引用次数: 28

Abstract

Security of lives and properties is highly important for enhanced quality living. Smart home automation and its application have received much progress towards convenience, comfort, safety, and home security. With the advances in technology and the Internet of Things (IoT), the home environment has witnessed an improved remote control of appliances, monitoring, and home security over the internet. Several home automation systems have been developed to monitor movements in the home and report to the user. Existing home automation systems detect motion and have surveillance for home security. However, the logical aspect of averting unnecessary or fake notifications is still a major area of challenge. Intelligent response and monitoring make smart home automation efficient. This work presents an intelligent home automation system for controlling home appliances, monitoring environmental factors, and detecting movement in the home and its surroundings. A deep learning model is proposed for motion recognition and classification based on the detected movement patterns. Using a deep learning model, an algorithm is developed to enhance the smart home automation system for intruder detection and forestall the occurrence of false alarms. A human detected by the surveillance camera is classified as an intruder or home occupant based on his walking pattern. The proposed method’s prototype was implemented using an ESP32 camera for surveillance, a PIR motion sensor, an ESP8266 development board, a 5 V four-channel relay module, and a DHT11 temperature and humidity sensor. The environmental conditions measured were evaluated using a mathematical model for the response time to effectively show the accuracy of the DHT sensor for weather monitoring and future prediction. An experimental analysis of human motion patterns was performed using the CNN model to evaluate the classification for the detection of humans. The CNN classification model gave an accuracy of 99.8%.
基于深度学习模型的增强型智能家居控制与安防系统
生命财产安全对提高生活质量至关重要。智能家居自动化及其应用在方便、舒适、安全、家庭安全等方面取得了很大进展。随着技术和物联网(IoT)的进步,家庭环境见证了通过互联网对家电、监控和家庭安全的远程控制的改进。已经开发了几种家庭自动化系统来监测家中的活动并向用户报告。现有的家庭自动化系统可以检测运动并监控家庭安全。然而,避免不必要或虚假通知的逻辑方面仍然是一个主要的挑战。智能响应和监控,使智能家居自动化高效。这项工作提出了一个智能家庭自动化系统,用于控制家用电器,监测环境因素,并检测家庭及其周围的运动。提出了一种基于检测到的运动模式的运动识别和分类的深度学习模型。利用深度学习模型,开发了一种算法来增强智能家居自动化系统的入侵者检测和防止假警报的发生。监控摄像头检测到的人根据其行走方式被分类为入侵者或家庭居住者。该方法的原型使用了用于监控的ESP32摄像机、PIR运动传感器、ESP8266开发板、5v四通道继电器模块和DHT11温湿度传感器来实现。利用响应时间的数学模型对测量的环境条件进行了评估,以有效地显示DHT传感器用于天气监测和未来预测的准确性。使用CNN模型对人体运动模式进行了实验分析,以评估检测人体的分类。CNN分类模型的准确率为99.8%。
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