ITMO
ru/ ru

ISSN: 1023-5086

ru/

ISSN: 1023-5086

Scientific and technical

Opticheskii Zhurnal

A full-text English translation of the journal is published by Optica Publishing Group under the title “Journal of Optical Technology”

Article submission Подать статью
Больше информации Back

УДК: 004.932

Restoring a silhouette of the hand in the problem of recognizing gestures by adaptive morphological filtering of a binary image

For Russian citation (Opticheskii Zhurnal):

Малашин Р.О., Луцив В.Р. Восстановление силуэта руки в задаче распознавания жестов с помощью адаптивной морфологической фильтрации бинарного изображения // Оптический журнал. 2013. Т. 80. № 11. С. 54–61.

 

Malashin R. O., Lutsiv V. R. Restoring a silhouette of the hand in the problem of recognizing gestures by adaptive morphological filtering of a binary image [in Russian] // Opticheskii Zhurnal. 2013. V. 80. № 11. P. 54–61.

For citation (Journal of Optical Technology):

R. O. Malashin and V. R. Lutsiv, "Restoring a silhouette of the hand in the problem of recognizing gestures by adaptive morphological filtering of a binary image," Journal of Optical Technology. 80(11), 685-690 (2013). https://doi.org/10.1364/JOT.80.000685

Abstract:

Algorithms are presented for the adaptive processing of binary images of silhouettes of the human hand obtained by means of color-brightness filters. These algorithms are based on the use of a combination of elementary morphological operations that take into account the direction of the fingers. Algorithms are presented for removing noise on binary images that are adapted to the result of the operation of a color filter, and a method is presented for filling internal contours of a silhouette of the hand in order to remove grouped marking errors. The experimental results show that the proposed image-processing method increases the probability of successful detection, tracking of the hand, and recognition of gestures.

Keywords:

hand gesture recognition, hand silhouette recovery, morphological processing of binary images

OCIS codes: 120.3930, 260.7210, 300.6210, 300.6540

References:
1. E. Dente, A. Bharath, J. Ng, A. Vrij, S. Mann, and A. Bull, “Tracking hand and finger movements for behavior analysis,” Pattern Recogn. Lett. 27, 1797 (2006).
2. D. Kelly, J. McDonald, and C. Markham, “A person-independent system for recognition of hand postures used in sign language,” Pattern Recogn. Lett.
31, 1359 (2010).
3. G. Caridakis, K. Karpouzis, A. Drosopoulos, and S. Kollias, “SOMM: self organizing Markov map for gesture recognition,” Pattern Recogn. Lett. 31, 52 (2010).
4. O. Ben Henia, M. Hariti, and S. Bouakaz, “A two-step minimization algorithm for model-based HandTracking,” in Eighteenth International Conference on Computer Graphics, Visualization and Computer Vision (WSCG), University of West Bohemia, Campus-Bory, Plzen, Czech Republic, February 1–4, 2010, pp. 189–197.
5. I. Oikonomidis, N. Kyriazis, and A. A. Argyros, “Efficient model-based 3D tracking of hand articulations using Kinect,” in Proceedings of the 22nd
British Machine Vision Conference, BMVC 2011, University of Dundee, UK, Aug. 29–Sept. 1, 2011, pp. 101.1–101.11.
6. L. Shapiro and G. Stockman, Computer Vision (Prentice Hall, New York, 2001; Binom, Moscow, 2006).
7. M. Soriano, B. Martinkauppi, S. Huovinen, and M. Laaksonen, “Using the skin locus to cope with changing illumination conditions in color-based
face tracking,” in Proceedings of IEEE Nordic Signal Processing Symposium, Kolmarden, Sweden, 2000, pp. 383–386.
8. C. Chiang, W. Tai, M. Yang, Y. Huang, and C. Huang, “A novel method for detecting lips, eyes and faces in real time,” Real-Time Imaging 9, 277 (2003).
9. A. Albiol, L. Torres, and E. J. Delp, “Optimum color spaces for skin detection,” in Proceedings of the 2001 International Conference on Image Processing, 2001, vol. 1, pp. 122–124.