Abstract

Traditional pattern recognition approaches have gained a lot of popularity. However, these are largely dependent upon manual feature extraction, which makes the generalized model obscure. The sequences of accelerometer data recorded can be classified by specialized smartphones into well known movements that can be done with human activity recognition. With the high success and wide adaptation of deep learning approaches for the recognition of human activities, these techniques are widely used in wearable devices and smartphones to recognize the human activities. In this paper, convolutional layers are combined with long short-term memory (LSTM), along with the deep learning neural network for human activities recognition (HAR). The proposed model extracts the features in an automated way and categorizes them with some model attributes. In general, LSTM is alternative form of recurrent neural network (RNN) which is famous for temporal sequences’ processing. In the proposed architecture, a dataset of UCI-HAR for Samsung Galaxy S2 is used for various human activities. The CNN classifier, which should be taken single, and LSTM models should be taken in series and take the feed data. For each input, the CNN model is applied, and each input image’s output is transferred to the LSTM classifier as a time step. The number of filter maps for mapping of the various portions of image is the most important hyperparameter used. Transformation on the basis of observations takes place by using Gaussian standardization. CNN-LSTM, a proposed model, is an efficient and lightweight model that has shown high robustness and better activity detection capability than traditional algorithms by providing the accuracy of 97.89%.

Highlights

  • Introduction to Human Activity RecognitionToday, the human assistance recognition system has been an essential part in the lives of human

  • We have proposed the hybrid model for human activity recognition

  • We have described various parameters along-with results achieved after applying the lightweight model for Human Activity Recognition

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Summary

Introduction

The human assistance recognition system has been an essential part in the lives of human It recognizes the human’s presence or the current state/activity/action that relies upon that information that is being received from the various sensors. This system is used to detect the human’s motion daily activities. A HAR system has major areas of applications, such as interaction among humans and computers, remote monitoring, military, healthcare, gaming, sports, security, and surveillance. This assistance system has other areas of wide applications, such as monitoring human’s special activities, monitoring sleep disorders, rehabilitation activities behavior recognition, fall detection, etc. Finding appropriate data and preparing it for the further process makes use of costly sensors and issues related to privacy and security becomes difficult to use the public dataset

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