Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
536506 | Pattern Recognition Letters | 2011 | 7 Pages |
This paper presents a computer vision system that can recognize Turkish fingerspelling sign hand postures by a method based on the Generalized Hough Transform, interest regions, and local descriptors. A novel method for calculating the reference point for the Generalized Hough Transform, and a simpler but more effective Hough voting strategy are proposed. The stages of implementing a Generalized Hough Transform are examined in detail, and the issues that affect the method success are discussed. The system is tested on a data set with 29 classes of non-rigid hand postures signed by three different signers on non-uniform backgrounds. It attains a 0.93 success rate.
► We introduce a Turkish fingerspelling recognition system. ► We describe a similarity amount base classification scheme. ► We discuss the strong and weak points of the Generalized Hough Transform.