使用CNN和预训练机器学习模型的人类活动识别

D. N. V. Kumari, MohdSalmanuddin Talha, C. Vinod, Mithilesh Kamitikar, VaibhavM Pattar
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摘要

人类活动识别(HAR)丰富了人们的生活,它从原始输入数据中提取人类行为的行动层面细节。人类活动识别有多种用途,包括老年人监视系统、异常行为等等。然而,像卷积神经网络这样的深度学习模型已经超越了传统的机器学习方法。由于CNN,可以提取特征并降低计算成本。另一方面,迁移学习是指使用预训练的机器学习模型,可以使用一种称为杠杆CNN的特殊类型的人工神经网络来检测人类活动。使用CNN模型可以为人类活动识别提供高达96.95%的检测准确率,在HAR方面已经进行了大量的研究。论文的大部分只有几个模型,但是我们知道的是,我们拥有的数据越多,模型就越好,模型就越准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Activity Recognition using CNN and Pretrained Machine Learning Models
People's lives are enriched by human activity recognition (HAR), which extracts action-level details about human behaviour from raw input data. There are a variety of uses for Human Activity Recognition, including elderly surveillance systems, abnormal behaviour, and so forth. However, deep learning models such as Convolutional Neural Networks have outperformed traditional machine learning methods. As a result of CNN, it is possible to extract features and reduce computational costs. Transfer Learning, on the other hand, refers to the use of pre-trained machine learning models that can be used to detect human activity using a special type of Artificial Neural Network known as Leveraging CNN. Resnet-34 Use of a CNN model can provide detection accuracy up to 96.95 percent for human activity recognition Numerous studies and research have been conducted on HAR. There are only a few models in the majority of the paper, however What we know is that the more data we have, the better the model and the more accurate the model will be.
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