Abstract
In the current scenario, it is significant to design active learning paradigms for analyzing human activities using Wearable Internet of Things (W-IoT) sensors for health parameter analysis. Further, in the healthcare sector, data collection using decision-making tools uses wearable sensors for monitoring using Cloud assisted Internet of Things (IoT). Although several conventional algorithms and deep learning models show promising results in sensor data analysis for recognizing human behaviors, the evaluation of their ambiguity in decision-making is still difficult and several conventional systems are more complex. Due to the restricted computing capacity, low-power W-IoT devices need an optimized network to manage the healthcare data effectively and efficiently for reliable analysis. Hence, a new Human Activity Recognition based on Improved Bayesian Convolution Network (IBCN)has been proposed which allows each smart system to download data via either traditional Radio Frequency (RF) communication or low power back dispersion communications with cloud assistance. In IBCN, A distribution of the model’s latent variable is designed and the features are extracted using convolution layers, the performance of the W-IoT has been improved by combining a variable autoencoder with a standard deep net classifier. Furthermore, the Bayesian network helps to address the security issues using Enhanced deep learning (EDL) design with an effective offloading strategy. The experimental results show that the data collected from the wearable IoT sensor is sensitive to various sources of uncertainty, i.e. aleatoric and epistemic, as especially named noise and reliability. Furthermore, lab-scale experimental analysis on patient’s health data classification accuracy has been considerably developed using IBCN than conventional design as namedCognitive radio (CR) learning, deep learning-based sensor activity recognition (DL-SAR) and Cloud-assisted Agent-based Smart home Environment (CASE).
Highlights
STUDYIn improving road transport safety and efficiency by linking intelligent vehicles over the cables, the Internet of Things (IoT) platform has played an important part
This paper explores the recent development of deep learning-based sensor activity recognition (DL-SAR) [17]
The new network parameters can be transferred to the wearable sensor to perform an HRC on-board to detect activities with the greatest efficiency (Figure 6)
Summary
STUDYIn improving road transport safety and efficiency by linking intelligent vehicles over the cables, the Internet of Things (IoT) platform has played an important part. Several problems are introduced in the very complex topology and time-varied spectrum of CR-based vehicle networks. They follow a Deep Q-Learning Approach (DQLA) to develop an optimized data transfer schedule for cognitive vehicle networks to reduce transmission costs, while completely using different modes and tools of communication. Sensor-based activity recognition seeks broad, high-level information from many low-level sensor readings of human activities. In recent years traditional approaches to pattern recognition have made significant progress. For unsupervised and radical learning reasons, current approaches are compromised. The recent development in deep learning enables automated extraction in highlevel features to achieve promising performance in many fields. This paper explores the recent development of deep learning-based sensor activity recognition (DL-SAR) [17]
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.