首页> 外文期刊>Indian Journal of Science and Technology >Identifying the Gestures of Toddler, Pregnant Woman and Elderly using Segmented Pigeon Hole Feature Extraction Technique and IR-Threshold Classifier
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Identifying the Gestures of Toddler, Pregnant Woman and Elderly using Segmented Pigeon Hole Feature Extraction Technique and IR-Threshold Classifier

机译:使用分段鸽孔特征提取技术和红外阈值分类器识别幼儿,孕妇和老年人的手势

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Objectives: The Objective of this research is to develop a feature extractor and a classifier which will identify and classify the gestures of infants, elderly and pregnant woman using Gait Signal re-ceived from wearable electrodes which is positioned on the body of subjects. Methods/Statistical Analysis: Remote health care monitoring is a technology which enables monitoring a person outside usual medical settings i.e., in the house or residence, which may increase access to caretakers or person at home but it will decrease healthcare deliverance costs. Findings: A novel segmented pigeon hole data extraction and reduction technique is proposed for reducing data and feature extraction. Secondly an Iteration Reduced Threshold based Classifier (IR-Threshold Classifier) has been introduced, which classifies the reduced extracted data into Safe and Danger for toddler, Normal and contra for pregnant women and Stable and Fall for elderly. Feature extraction and reduction using Segmented Pigeon Hole algorithm reduced the dataset for this domain. It is compared with bench mark data set and it had produced the significant data reduction. The IR Threshold classifier had shown 95% of accuracy when compared with the other classifiers. Applications/Improvements: This gives the best predominant electrode set by reducing data which will increase the classification accuracy.
机译:目的:本研究的目的是开发一种特征提取器和一个分类器,该特征提取器和分类器将使用从位于对象身体上的可穿戴电极接收的步态信号来识别,分类婴儿,老年人和孕妇的手势。方法/统计分析:远程医疗保健监视是一项技术,可用于监视不在常规医疗设置范围内(例如,在房屋或住宅中)的人员,这可能会增加与看护者或在家中人员的联系,但会降低医疗提供成本。研究结果:提出了一种新颖的分段鸽孔数据提取和归约技术,用于数据和特征提取。其次,引入了基于迭代减少阈值的分类器(IR阈值分类器),该分类器将减少的提取数据分类为幼儿的“安全和危险”,孕妇的“正常”和“对立”以及老人的“稳定和下降”。使用分段鸽子洞算法进行特征提取和归约可以减少该域的数据集。将其与基准数据集进行比较,并产生了明显的数据减少。与其他分类器相比,IR阈值分类器显示出95%的准确性。应用/改进:通过减少数据,这将提供最佳的主要电极组,这将提高分类精度。

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