Lower Order Krawtchouk Moment-Based Feature-Set for Hand Gesture Recognition

The capability of lower order Krawtchouk moment-based shape features has been analyzed. The behaviour of 1D and 2D Krawtchouk polynomials at lower orders is observed by varying Region of Interest (ROI). The paper measures the effectiveness of shape recognition capability of 2D Krawtchouk features at...

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Bibliographic Details
Main Authors: Bineet Kaur, Garima Joshi
Format: Article
Language:English
Published: Wiley 2016-01-01
Series:Advances in Human-Computer Interaction
Online Access:http://dx.doi.org/10.1155/2016/6727806
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Summary:The capability of lower order Krawtchouk moment-based shape features has been analyzed. The behaviour of 1D and 2D Krawtchouk polynomials at lower orders is observed by varying Region of Interest (ROI). The paper measures the effectiveness of shape recognition capability of 2D Krawtchouk features at lower orders on the basis of Jochen-Triesch’s database and hand gesture database of 10 Indian Sign Language (ISL) alphabets. Comparison of original and reduced feature-set is also done. Experimental results demonstrate that the reduced feature dimensionality gives competent accuracy as compared to the original feature-set for all the proposed classifiers. Thus, the Krawtchouk moment-based features prove to be effective in terms of shape recognition capability at lower orders.
ISSN:1687-5893
1687-5907