Recently, cloud computing technology has been rapidly growing faster, offering cloud-based human activity recognition applications with lower latency. In this paper, we design and implement a new distributed driver activity recognition system (DHAR). The proposed distributed system absorbs a more significant number of input sensor data from humans with a lightweight model that provides high accuracy for driver activity recognition. In addition, our model has employed the entire convolution network – Long Short-term Memory (FCN-LSTM) to predict human activities of a total of 6 classes such as walking, walking upstairs, walking-downstairs, sitting, standing, and laying. We evaluate the proposed system using a well-known UCI-HAR opensource dataset containing a collection of smart-phones data for 30-subjects while performing various activities using a smartphone. We used various Amazon cloud computing services for the deployment of the proposed architecture. The experimental results show that the proposed architecture improves end-to-end latency by 2.7 times compared to the traditional architecture.
목차
Abstract I. INTRODUCTION II. RELATED WORK A. UCI-HAR Dataset B. Shun et al.'s Human Activity Recognition III. PROPOSED METHODOLOGY A. Global Model Deployment IV. PRIMARILY EXPERIMENTAL SETUP AND RESULTS V. CONCLUSION ACKNOWLEDGMENT
저자
Mehdi Pirahandeh [ Department of Electronic Engineering, Inha University ]
Deok-Hwan Kim [ Department of Electronic Engineering, Inha University ]
Corresponding author