Classification of Human Activities using CNN with Principal Component Analysis

C. Prasad, Ramya Bandi, Devulapally Aashrith, Anjali Sampelly, Maraboina Sai Chand, Sreedhar Kollem
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引用次数: 1

Abstract

Human Activities Recognition is the process of automatically identifying a person’s physical activities in order to create a secure environment for everyone, even elderly people, in their daily lives. In this paper, the classification of human activities using Conventional Neural networks with Principal Component Analysis with presented. In the proposed method, Principal Component Analysis is employed for dimensionality reduction and Conventional Neural networks are employed for classification. The Human Activities Recognition dataset from Kaggle is used in the suggested model. The effectiveness of the proposed model is assessed in terms of accuracy. The proposed model achieved an accuracy of about 96.71%.
基于主成分分析的CNN人类活动分类
人类活动识别是自动识别一个人的身体活动的过程,目的是为每个人,甚至老年人,在日常生活中创造一个安全的环境。本文介绍了基于主成分分析的传统神经网络对人类活动的分类。该方法采用主成分分析进行降维,采用传统神经网络进行分类。在建议的模型中使用了来自Kaggle的人类活动识别数据集。该模型的有效性是根据准确性来评估的。该模型的准确率约为96.71%。
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