基于图像组的老年护理系统跌倒检测

S. Sowmyayani, V. Murugan, J. Kavitha
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引用次数: 6

摘要

跌倒检测是老年人面临的一个严重问题。不断的检查对秋季鉴定很重要。目前,许多与跌倒检测相关的方法是安全目的和医疗保健行业研究的重要领域。本文的目的是识别老年人跌倒。提出了一种基于关键帧的老年人跌倒检测方法。实验分别在Rzeszow大学(UR)跌倒检测数据集、跌倒检测数据集和MultiCam数据集上进行。实验证明,该方法在UR跌倒检测数据集、跌倒检测数据集和MultiCam数据集上的准确率分别达到了99%、98.15%和99%。通过与其他方法的性能比较,证明该方法具有更高的准确率。
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Fall Detection in Elderly Care System Based on Group of Pictures
Fall detection is a serious problem in elder people. Constant inspection is important for this fall identification. Currently, numerous methods associated with fall detection are a significant area of research for safety purposes and for the healthcare industries. The objective of this paper is to identify elderly falls. The proposed method introduces keyframe based fall detection in elderly care system. Experiments were conducted on University of Rzeszow (UR) Fall Detection dataset, Fall Detection Dataset and MultiCam dataset. It is substantially proved that the proposed method achieves higher accuracy rate of 99%, 98.15% and 99% for UR Fall detection dataset, Fall Detection Dataset and MultiCam dataset, respectively. The performance of the proposed method is compared with other methods and proved to have higher accuracy rate than those methods.
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