Video-Based Human Activity Recognition for Elderly Using Convolutional Neural Network

K. Vijayaprabakaran, K. Sathiyamurthy, M. Ponniamma
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引用次数: 7

Abstract

A typical healthcare application for elderly people involves monitoring daily activities and providing them with assistance. Automatic analysis and classification of an image by the system is difficult compared to human vision. Several challenging problems for activity recognition from the surveillance video involving the complexity of the scene analysis under observations from irregular lighting and low-quality frames. In this article, the authors system use machine learning algorithms to improve the accuracy of activity recognition. Their system presents a convolutional neural network (CNN), a machine learning algorithm being used for image classification. This system aims to recognize and assist human activities for elderly people using input surveillance videos. The RGB image in the dataset used for training purposes which requires more computational power for classification of the image. By using the CNN network for image classification, the authors obtain a 79.94% accuracy in the experimental part which shows their model obtains good accuracy for image classification when compared with other pre-trained models.
基于视频的卷积神经网络老年人人体活动识别
针对老年人的典型医疗保健应用程序包括监控他们的日常活动并为他们提供帮助。与人类视觉相比,该系统难以对图像进行自动分析和分类。针对监控视频活动识别中存在的一些具有挑战性的问题,包括在不规则光照和低质量帧的观察下进行场景分析的复杂性。在本文中,作者的系统使用机器学习算法来提高活动识别的准确性。他们的系统采用了卷积神经网络(CNN),这是一种用于图像分类的机器学习算法。该系统旨在通过输入监控视频来识别和协助老年人的人类活动。数据集中的RGB图像用于训练目的,这需要更多的计算能力来进行图像分类。通过使用CNN网络进行图像分类,在实验部分获得了79.94%的准确率,表明与其他预训练模型相比,该模型具有较好的图像分类准确率。
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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