Object Detection and Tracking using Modified Diamond Search Block Matching Motion Estimation Algorithm
DOI:
https://doi.org/10.9781/ijimai.2017.10.004Keywords:
Motion Estimation, Background Subtraction, Block Matching Algorithm, Cross Diamond Search Algorithm, Diamond Search AlgorithmAbstract
Object tracking is one of the main fields within computer vision. Amongst various methods/ approaches for object detection and tracking, the background subtraction approach makes the detection of object easier. To the detected object, apply the proposed block matching algorithm for generating the motion vectors. The existing diamond search (DS) and cross diamond search algorithms (CDS) are studied and experiments are carried out on various standard video data sets and user defined data sets. Based on the study and analysis of these two existing algorithms a modified diamond search pattern (MDS) algorithm is proposed using small diamond shape search pattern in initial step and large diamond shape (LDS) in further steps for motion estimation. The initial search pattern consists of five points in small diamond shape pattern and gradually grows into a large diamond shape pattern, based on the point with minimum cost function. The algorithm ends with the small shape pattern at last. The proposed MDS algorithm finds the smaller motion vectors and fewer searching points than the existing DS and CDS algorithms. Further, object detection is carried out by using background subtraction approach and finally, MDS motion estimation algorithm is used for tracking the object in color video sequences. The experiments are carried out by using different video data sets containing a single object. The results are evaluated and compared by using the evaluation parameters like average searching points per frame and average computational time per frame. The experimental results show that the MDS performs better than DS and CDS on average search point and average computation time.Downloads
References
H. S. Parekh, U. K. Jaliya, and D. G. Thakore, “A survey on object detection and tracking methods,” International Journal of Innovative Research in Computer and Communication Engineering, vol. 2, no. 2, 2014.
B. Karasulu and S. Korukoglu, Moving Object Detection and Tracking in Videos, SpringerBriefs in Computer Science. Springer, 2013.
S. H. Shaikh, N. Chaki, and K. Saeed, Moving Object Detection Using Background Subtraction, SpringerBriefs in Computer Science. Springer, 2014.
M. Helly, M. Desai, and V. Gandhi, “A survey: Background subtraction techniques,” International Journal of Scientific & Engineering Research, vol. 5, no. 12, 2014.
M. Piccardi, “Background subtraction techniques: A review,” in Proceedings of the IEEE International Conference on Systems, Man and Cybernetics, 2004.
R. Zhang and J. Ding, “Object tracking and detecting based on adaptive background subtraction,” in Proceedings of the International Workshop on Information and Electronics Engineering, 2012.
D. P. Chau, F. Bremond, and M. Thonnat, “Object tracking in videos: Approaches and issues,” in Proceedings of the International Workshop “Rencontres UNS-UD”, 2013.
A. K. Chauhan and D. Kumar, “Study of moving object detection and tracking for video surveillance,” International Journal of Advanced Research in Computer Science and Software Engineering, vol. 3, no. 4, 2013.
C.-M. Wu and J.-Y. Huang, “A new block matching algorithm for motion estimation,” Applied Mechanics and Materials, 2017.
N. Singh and A. Mishra, “Block matching algorithm for motion estimation using previous motion vector pattern,” International Journal of Computer Applications, vol. 150, no. 8, Sep. 2016.
H. A. Surrah and M. J. Haque, “A comparative approach for block matching algorithms used for motion estimation,” International Journal of Computer Science Issues, vol. 11, no. 3, no. 2, 2014.
H.-K. Tang, T.-H. Wu, and Y.-T. Lin, “Real-time object image tracking based on block matching algorithm,” Project Report. Available: https://homepages.cae.wisc.edu/~ece734/project/s06/lintangwuReport.pdf
M. H. Sherie, I. Ashimaa, M. Imbaby, and A. Elam, “Experimental comparison among fast block matching algorithms (FBMAs) for motion estimation and object tracking,” in Proceedings of the 28th National Radio Science Conference (NRSC 2011), National Telecommunication Institute, Egypt, 2011.
B. N. Tejas, S. H. Bharathi, and K. N. Vidya Sagar, “Block based algorithms for estimating motion,” International Research Journal of Computer Science, vol. 3, no. 5, 2016.
B. Sugandi, H. Kim, J. K. Tan, and S. Ishikawa, “A block matching technique for object tracking,” in Proceedings of the International Conference on Computer and Communication Engineering, Kuala Lumpur, 2008.
N. Verma, T. Sahu, and P. Sahu, “Efficient motion estimation by fast three step search algorithms,” International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering, vol. 1, no. 5, 2012.
B. Ait-Boudaoud and Djamel, “Improved diamond half-pel hexagon search algorithm for block-matching motion estimation,” in Proceedings of the IS&T International Symposium on Electronic Imaging (EI 2017), Society for Imaging Science and Technology, 2016.
S. Banchhor and D. Shukla, “An improved diamond search pattern for motion estimation,” IEEE Transactions on Image Processing, vol. 9, no. 2, 2016.
C. H. Cheung and L. M. Po, “A novel cross-diamond search algorithm for fast block motion estimation,” i-manager’s Journal on Pattern Recognition, 2002.
S. Acharjee, N. Dey, D. Biswas, P. Das, and S. Chaudhuri, “A novel block matching algorithmic approach with smaller block size for motion vector estimation in video compression,” in Proceedings of the 12th IEEE International Conference on Intelligent Systems Design and Applications (ISDA), 2012.
S. Kamble, N. Thakur, L. Malik, and P. Bajaj, “Color video compression based on fractal coding using quad tree weighted finite automata,” in Proceedings of the Second International Conference on Information Systems Design and Intelligent Applications (INDIA 2015), Advances in Intelligent Systems and Computing, vol. 340, pp. 649–658. Springer, 2015.
S. Kamble, N. Thakur, L. Malik, and P. Bajaj, “Quad tree partitioning and extended weighted finite automata based fractal color video coding,” International Journal of Image Mining, vol. 2, no. 1, pp. 31–56, 2016.
S. Kamble, N. Thakur, and P. Bajaj, “A review on block matching motion estimation and automata theory based approaches for fractal coding,” International Journal of Interactive Multimedia and Artificial Intelligence, vol. 4, no. 2, pp. 91–104, 2016.
S. Kamble, N. Thakur, L. Malik, and P. Bajaj, “Fractal video coding using modified three-step search algorithm for block matching motion estimation,” in Proceedings of the International Conference on Computer Vision & Robotics, Advances in Intelligent Systems and Computing, vol. 332, pp. 151–162. Springer, 2015.
Downloads
Published
-
Abstract59
-
PDF31






