Human Activity Recognition System for Surveillance
Author(s):
ABHIMAANYU VASHISHTH, Astha Singh, Shashank Rana, Aryan Mishra, Dr. Bindu Garg
Keywords:
Deep Learning, Classification, Detecting Human activity, Image Processing, Feature Extraction, CNN, LR
Abstract
Human activity recognition is important in human-to-human contact and interpersonal relationships. One of the key objects of research in the scientific fields of computer vision and machine learning is the human ability to identify another person's activity. With the introduction of tiny sensor technologies that can be worn on the body, it is now possible to gather and retain data on various aspects of human mobility under free living settings. This technique has the potential to be employed in automated activity profiling systems that generate a continuous record of activity patterns over time. These activity profiling systems rely on classification algorithms to properly interpret body-worn sensor data and identify various activities. This article examines the many strategies used to classify normal activities and/or identify falls using body-worn sensor data. The study is organized according to the many analytical methodologies and highlights the wide range of approaches that have previously been used in this sector. Although tremendous progress has been achieved in this critical field, there is still much room for improvement, particularly in the application of sophisticated classification approaches to situations requiring a wide range of activities.
Article Details
Unique Paper ID: 155876

Publication Volume & Issue: Volume 9, Issue 2

Page(s): 341 - 347
Article Preview & Download


Share This Article

Conference Alert

NCSST-2021

AICTE Sponsored National Conference on Smart Systems and Technologies

Last Date: 25th November 2021

SWEC- Management

LATEST INNOVATION’S AND FUTURE TRENDS IN MANAGEMENT

Last Date: 7th November 2021

Go To Issue



Call For Paper

Volume 8 Issue 4

Last Date 25 September 2021

About Us

IJIRT.org enables door in research by providing high quality research articles in open access market.

Send us any query related to your research on editor@ijirt.org

Social Media

Google Verified Reviews

Contact Details

Telephone:6351679790
Email: editor@ijirt.org
Website: ijirt.org

Policies