A Review on Human Action Recognisation Using SVM Classifier

Authors

  • Jasreet Kaur  Giani Zail Singh Campus College of Engineering and Technology, Bathinda, Punjab, India
  • Er Rajinder Kaur  Giani Zail Singh Campus College of Engineering and Technology, Bathinda, Punjab, India

Keywords:

ROI, Non-ROI,2D/3D, Human Action.

Abstract

The Research work Human activity recognisation district of interest a portion of video with mixture method and upgrade of Non –region of interest part is examined in this work. As of late, programmed human movement acknowledgment has attracted much consideration the field of video examination innovation because of the developing requests from numerous applications, for example, reconnaissance situations, amusement situations and medicinal services frameworks. In an observation domain, the programmed recognition of anomalous exercises can be utilized to alarm the related power of potential criminal or risky practices, for example, programmed reporting of a man with a sack dallying at an airplane terminal or station. There are SVM and KNN is studied to segment the human action on MAD dataset and accuracy is calculated on this dataset after the action recognisation.

References

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Published

2016-06-30

Issue

Section

Research Articles

How to Cite

[1]
Jasreet Kaur, Er Rajinder Kaur, " A Review on Human Action Recognisation Using SVM Classifier, International Journal of Scientific Research in Science, Engineering and Technology(IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 2, Issue 3, pp.292-295, May-June-2016.