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Suspicious activity detection using deep learning in secure assisted living IoT environments

机译:在安全辅助生活IOT环境中使用深度学习的可疑活动检测

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摘要

Children who are left alone in environments such as daycares and creches require constant monitoring and care to protect them from abuse. In this paper, we propose a novel deep learning-based method for predicting the occurrence of abnormal events using footage gathered from networked surveillance systems and notifying users of those events in an Internet of Things (IoT) environment. Sequences of images are converted to still frames and de-blurred using adaptive motion detection techniques. Then, abnormal activities are predicted using random forest differential evolution with kernel density (RFKD), and any abnormal activities that are detected cause signals to be sent to IoT devices via the MQTT protocol. The proposed work consists of a multi-classifier, deep neural network and kernel density functions. The multi-classifier is used for input classifications from the sequence of frames of videos. The deep neural network is used to learn and train the data and kernel density is used clustering and prediction of data. The novelty of the proposed work is in the dynamic nature of activity prediction. Most of the previous work in this research area concentrated on static activity prediction. The proposed work is able to support both static and dynamic activities of daycare environments. In our experimental trials, our novel method's performance is shown to be superior to that of the ReHAR method.
机译:独自在日子和车轮等环境中留下的儿童需要不断监测和关心保护它们免受滥用。在本文中,我们提出了一种新的基于深度学习的方法,用于预测使用网络监控系统收集的镜头的异常事件的发生,并在内容网(物联网)环境中向用户通知这些事件。使用自适应运动检测技术将图像序列转换为静止帧和去模糊。然后,使用随机森林差分演进用内核密度(RFKD)的随机森林差分演进来预测异常活动,以及通过MQTT协议检测到的任何异常活动原因将信号发送到IOT设备。所提出的工作包括多分类器,深度神经网络和内核密度函数。多分类器用于从视频帧序列中输入分类。深度神经网络用于学习和训练数据,内核密度使用聚类和数据预测。拟议工作的新颖性是活动预测的动态性质。本研究领域的大多数工作中的工作集中在静态活动预测上。拟议的工作能够支持日托环境的静态和动态活动。在我们的实验试验中,我们的新方法的性能被认为是优于重新发清的方法。

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