A Review on Classification Techniques for Human Activity Recognition

Authors

  • Sonali Research Scholar, CE Department, YCOE, Punjabi University, Patiala, India
  • Ashok Kumar Bathla Assistant Professor, CE Department, YCOE, Punjabi University, Patiala, India

DOI:

https://doi.org/10.53555/nnbma.v1i2.131

Keywords:

action recognition, classification, support vector machine, nearest neighbor, bag of visual words

Abstract

Recognizing human actions from video sequences has many important applications like video surveillance, patient monitoring, human computer interaction, dance choreography analysis, analysis of sports events and entertainment environments. It involves processing the video into frames firstly and finding out the interest points, then extracting the features and lastly specifying and labeling the videos following an appropriate classifying approach like Support Vector Machine, bag of words or nearest neighbor. This paper provides a detailed overview of various state-of-the-art research papers on human activity recognition using different types of classifiers. We surveyed various challenges exhibited by computer vision researchers like the problem of occlusion, 2D/3D pose estimation, variations in viewpoints, human body modeling especially of a person who is paralyzed or injured. From this survey, we can make conclusion of various advantageous and disadvantageous facts about different classifiers used in the detection and classification task.

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Published

28-02-2015

How to Cite

Sonali, & Bathla, A. K. (2015). A Review on Classification Techniques for Human Activity Recognition. Journal of Advance Research in Business, Management and Accounting (ISSN: 2456-3544), 1(2), 01-05. https://doi.org/10.53555/nnbma.v1i2.131

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