HAND GESTURE SEGMENTATION AND RECOGNITION BASED ON GRAPH CUT

Journal Title: GRD Journal for Engineering - Year 2016, Vol 1, Issue 0

Abstract

Hand gesture recognition system’s performance and accuracy are increased by one of the pre-processing techniques. i.e., gesture segmentation. In some real time applications, due to low accuracy in gesture matching process used to lead unexpected response. Earlier days, contour model based hand gesture recognition, accelerometer based hand gesture recognition and scene classifications based on the contextual semantic information of an image are the recognition techniques used in hand gesture recognition system. Here, these techniques arise many problems. They are lagging in focus on detecting hands, some of them directly use marker based motion capture devices, it cannot provide a rotation and scale invariance, it does not provide the hand parts segmentation, and it capture the same gestures and manually labelled them for each subject. These draw backs can be overcome by implementing the new image segmentation algorithm. The proposed algorithm uses binaryzation and K Nearest Neighbor (KNN) algorithms. The binaryzation used for back ground subtraction. And KNN classifier for classifying the hand features. Here, a sample image is processed with the graph cut algorithm. And then the parameter is observed. The parameter has been compared with parameter observed in CSS (Curvature Scale Space) algorithm. Finally, the result shows that graph cut algorithm gave the better accuracy than CSS algorithm. In real-time application, the obtained contour descriptor will be matched with contour descriptor in the data base. Once it matched, then it will trigger an event to drive an application.

Authors and Affiliations

R. Keerthana, Dr. S. Mythili

Keywords

Related Articles

IoT Based Agriculture and Transportation Surveillance

This paper gives details about monitoring the different parameters of a greenhouse farming namely temperature, soil moisture & humidity and it also describes how transportation surveillance is important for a proper busi...

Secured Video Streaming and Video Sharing in Mobile Networks using Cloud

The tradition of videos over mobile networks has been increasing staggeringly in such however that the wireless networks cannot keep up with the rigorous traffic. Poor quality of videos (long buffering time, intermittent...

Comparison on Auto Aerated Concrete to Normal Concrete

Aerated concrete is relatively homogeneous and compared to normal concrete, as it does not contain coarse aggregate phase that shows vast variation in its properties. The properties of aerated concrete depend on its micr...

Self-Sustainable City

Discover new technique to increase the use of pedestrian transportation by focusing on modern evolution. It includes several things like people carrying things in the city and how it helps in making better city in transp...

Comparative Analysis of Stepped Impedance with Open and Short Circuited Stub Microstrip Low Pass Fractal Filter

This paper proposed a comparison of stepped impedance fractal low pass filters at 1 GHz with open stub and short-circuited stub. Sierpinski carpet fractals used to reduce filter size and develop low profile filters. Frac...

Download PDF file
  • EP ID EP303143
  • DOI -
  • Views 80
  • Downloads 0

How To Cite

R. Keerthana, Dr. S. Mythili (2016). HAND GESTURE SEGMENTATION AND RECOGNITION BASED ON GRAPH CUT. GRD Journal for Engineering, 1(0), 541-544. https://europub.co.uk./articles/-A-303143