Abstract

The human action recognition (HAR) attempts to classify the activities of individuals and the environment through a collection of observations. HAR research is focused on many applications, such as video surveillance, healthcare and human computer interactions. Many problems can deteriorate the performance of human recognition systems. Firstly, the development of a light-weight and reliable smartphone system to classify human activities and reduce labelling and labelling time; secondly, the features derived must generalise multiple variations to address the challenges of action detection, including individual appearances, viewpoints and histories. In addition, the relevant classification should be guaranteed by those features. In this paper, a model was proposed to reliably detect the type of physical activity conducted by the user using the phone's sensors. This includes review of the existing research solutions, how they can be strengthened, and a new approach to solve the problem. The Stochastic Gradient Descent (SGD) decreases the computational strain to accelerate trade iterations at a lower rate. SGD leads to J48 performance enhancement. Furthermore, a human activity recognition dataset based on smartphone sensors are used to validate the proposed solution. The findings showed that the proposed model was superior.

Highlights

  • The aim of human action recognition (HAR) is to recognize activities extracted from a number of observations concerning the behavior and environmental conditions of subjects

  • Machine learning is seen as a form of artificial intelligence (AI) which deliver learning-free machines with no more processes and Shallow learning [8] is regarded as machine learning

  • This paper proposes a comparatively shallow learning algorithm for human action recognition based on smartphones

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Summary

Introduction

The aim of human action recognition (HAR) is to recognize activities extracted from a number of observations concerning the behavior and environmental conditions of subjects. A lot of applications for HAR research include video monitoring, healthcare and contact with human-computer. HAR uses sensors influenced by human movement for the classification of an operation of the individual. Both users and sensors of smartphones expand as users bring their smartphones. HAR seeks to identify activities arising from a variety of observations concerning the behavior and environmental conditions of subjects. Readings from many body sensors achieve a low error rate, but in reality the complex environment cannot be achieved [1]

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