Real-time Context-aware Learning System for IoT Applications

10/26/2018
by   Bhaskar Das, et al.
0

We propose a real-time context-aware learning system along with the architecture that runs on the mobile devices, provide services to the user and manage the IoT devices. In this system, an application running on mobile devices collected data from the sensors, learned about the user-defined context, made predictions in real-time and manage IoT devices accordingly. However, the computational power of the mobile devices makes it challenging to run machine learning algorithms with acceptable accuracy. To solve this issue, some authors have run machine learning algorithms on the server and transmitted the results to the mobile devices. Although the context-aware predictions made by the server are more accurate than their mobile counterpart, it heavily depends on the network connection for the delivery of the results to the devices, which negatively affects real-time context-learning. Therefore, in this work, we describe a context-learning algorithm for mobile devices which is less demanding on the computational resources and maintains the accuracy of the prediction by updating itself from the learning parameters obtained from the server periodically. Experimental results show that the proposed light-weight context-learning algorithm can achieve mean accuracy up to 97.51 execution time requires only 11ms.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/28/2023

Lightweight Modeling of User Context Combining Physical and Virtual Sensor Data

The multitude of data generated by sensors available on users' mobile de...
research
06/29/2016

De-Hashing: Server-Side Context-Aware Feature Reconstruction for Mobile Visual Search

Due to the prevalence of mobile devices, mobile search becomes a more co...
research
03/20/2018

Real-time Burst Photo Selection Using a Light-Head Adversarial Network

We present an automatic moment capture system that runs in real-time on ...
research
03/10/2017

PACO: A System-Level Abstraction for On-Loading Contextual Data to Mobile Devices

Spatiotemporal context is crucial in modern mobile applications that uti...
research
12/21/2020

Fast Physical Activity Suggestions: Efficient Hyperparameter Learning in Mobile Health

Users can be supported to adopt healthy behaviors, such as regular physi...
research
06/21/2021

ESAI: Efficient Split Artificial Intelligence via Early Exiting Using Neural Architecture Search

Recently, deep neural networks have been outperforming conventional mach...
research
06/22/2023

Slimmable Encoders for Flexible Split DNNs in Bandwidth and Resource Constrained IoT Systems

The execution of large deep neural networks (DNN) at mobile edge devices...

Please sign up or login with your details

Forgot password? Click here to reset