Publish In |
International Journal of Advances in Electronics and Computer Science-IJAECS |
Journal Home Volume Issue |
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Issue |
Volume-10,Issue-7 ( Jul, 2023 ) | |||||||||
Paper Title |
Machine Learning Based Human Activity Detection | |||||||||
Author Name |
Mudit Saxena, Kashish Tiwari, Keertika Singh,Vivek Kumar | |||||||||
Affilition |
1Assistant Professor, Department of Electronics & Communication Engineering ABES Engineering College Ghaziabad,India 2,3,4 Student , Department of Electronics & Communication Engineering ABES Engineering College Ghaziabad, India | |||||||||
Pages |
99-104 | |||||||||
Abstract |
Human Activity Recognition (HAR) aims to identifiy human activities based on sensor estimations, as well as to recognise accurate and efficient human behaviour represents as a challenging field of research in computer vision. To overcome the challenges, the two basic models: Convolutional Neural Network (CNN) and Deep Learning Long Short-Term Memory (LSTM) had the accurate results for all users, with 91.77% and 92.43%, respectively. Convolutional Neural Networks (CNNs) have emerged as a useful category of systems for issues involving image recognition or computer vision. We investigate several methods for increasing a CNN's connection in the time domain to take benefits from local spatiotemporal data, and recommend a multi-resolution, foveal structure as a potential method to quicken training. We propose an experimental and improved approach that combines improved hand-crafted features with neural network architecture that outperform powerful methods while applying the same standardized score to different datasets. Finally, we offer a variety of analysis- related suggestions for researchers. This survey report is a valuable resource for people interested in future research on human activity recognition. Keywords - Convolution Neural Network, Deep Learning, Human Activity Detection, Accelerometer Data, Long-Short Term Memory, Wireless Sensor Data Mining | |||||||||
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