Identifying images on moving objects to enhance the recognition

  • Authors

    • C. Raghavendra
    • A. Kumaravel
    • S. Sivasubramanian
    https://doi.org/10.14419/ijet.v7i1.5.9162

    Received date: January 11, 2018

    Accepted date: January 11, 2018

    Published date: December 31, 2017

  • Abstract

    To explore another group of algorithms that break down time-changing scenes, perceiving and following educated questions after some time. The new procedures are wanted to address key request of moving pictures, including capricious moment to-minute changes in region, gauge, presentation, lighting, and obstacle. We exhibit a novel endeavour in which objects turn and divert while suspended from a flexible's arms;the identification and following calculation joins attributes of various earlier distributed strategies, consolidating them in a novel mould to empower this recently presented assignment. Different strategies have discovered that enhancing recognition will enhance following; we demonstrate that enhanced following enhances object recognition.

  • References

    1. W.C., Gelfand, Ta D.N., Pulli K, and Chen N. SURFTrac: Efficient Tracking and Continuous Object Recognition Using Local Feature Descriptors. In IEEE Conference on Computer Vision and Pattern Recognition (CVPR), (2009), 2937-2944.
    2. Foresti G.L.: Object Recognition and Tracking for Remote Video Surveillance. IEEE Transactions on Circuits and Systems for Video Technology, 9 (7), (1999).
    3. C. Raghavendra, Dr. A Kumaravel, A. Anjaiah, “A New Hybrid Method for Image De-Noising In Light Of Wavelet Transform”, International Journal of Pure and Applied Mathematics, Volume 116 No. 21 2017, 197-202.
    4. K. Rajendra Prasad, C. Raghavendra, K Sai Saranya, “A Review on Classification of Breast Cancer Detection using Combination of The Feature Extraction Models”, International Journal of Pure and Applied Mathematics, Volume 116 No. 21 2017, 203-208.
    5. Mikolajczyk K. and Schmid C.: Performance Evaluation of Local Descriptors. IEEE Transactions on Pattern Analysis & Machine Intelligence, 27(10), (2005), 1615–1630,
    6. P. Kiran Kumar, C. Raghavendra, Dr. S. Sivasubramanyan, Exploring Multi Scale Mathematical Morphology for Dark Image Enhancement, International Journal of Pharmacy and Technology, Dec-2016, Vol. 8, Issue No.4, 23590-23597.
    7. Grauman K. and Darrell T.: The Pyramid Match Kernel: Discriminative Classification with Sets of Image Features. Proceedings of IEEE International Conference on Computer Vision, 2, (2005), 1458–1465.
    8. C. Raghavendra, A. Kumaravel and S. Sivasuramanyan, “Features Subset Selection using Improved Teaching Learning based Optimisation (ITLBO) Algorithms for Iris Recognition”, Indian Journal of Science and Technology, Vol 10(34), DOI: 10.17485/ijst/2017/v10i34/118307, September 2017.
    9. K. Rajendra Prasad, C. Raghavendra, Effective Mammogram Classification Using Various Texture Features, Journal of Advanced Research in Dynamical and Control Systems, Vol. 9. Sp– 12 / 2017.
    10. Yuen J., TorralbaA.,Liu C., Sivic J., and Freeman W.T.: SIFT Flow: Dense Correspondence Across Different Scenes. In ECCV '08: Proceedings of the 10th European Conference on Computer Vision, (2008), 28-42.
    11. C. Nalini, C. Raghavendra, K. Rajendra Prasad, “Comparative Observation and Performance Analysis of Multiple Algorithms on Iris Data”, International Journal of Pure and Applied Mathematics, Volume 116 No. 9 2017, 319-325.
    12. Wagner D., Reitmayr G., Mulloni A., Drummond T., and Schmalstieg D.: Pose Tracking from Natural Features on Mobile Phones. In ISMAR '08: Proceedings of the 7th IEEE/ACM International Symposium on Mixed and Augmented Reality, (2008), 125-134.
    13. K. Rajendra Prasad, C. Raghavendra, Padakandla Vyshnav, “Intelligent System for Visualized Data Analytics A Review”, International Journal of Pure and Applied Mathematics, Volume 116 No. 21 2017, 217-224.
    14. Lowe D.: Local Feature View Clustering for 3D Object Recognition. In 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'01), 1, (2001), 682-688.
    15. Ruiz-del-Solar J and Loncomilla P. Gaze Direction Determination of Opponents and Teammates in Robot Soccer. Lecture Notes in Computer Science, 4020, (2006), 230–242.
    16. Ruiz-del-Solar J. and Loncomilla P. A Fast Probabilistic Model for Hypothesis Rejection in SIFT Based Object Recognition. Lecture Notes in Computer Science, 4225, (2006), 696–705.
    17. Loncomilla P. & Ruiz-del-Solar J.: Robust Object Recognition Using Wide Baseline Matching for RoboCup Applications. Lecture Notes in Computer Science, 5001, (2008), 441–448.
    18. C. Raghavendra, A. Kumaravel, S. Sivasubramanian, “Iris Technology: A Review on Iris Based BiometricSystems for Unique Human Identification”, International Conference on Algorithms, Methodology, Models and Applications in Emerging Technologies – 2017, association WithIEEE.
    19. Mikolajczyk K., Tuytelaars T., Schmid C., Zisserman A., Matas J., Schaffalitzky F., Kadir T., and Van Gool L.: A Comparison of Affine Region Detectors. International Journal of Computer Vision 65(1), (2005), 43–72.
    20. Granger R.: Engines of the Brain: The Computational Instruction Set of Human Cognition. In AI Magazine, 27, (2006), 15-32.
    21. http://mi.eng.cam.ac.uk/research/projects/VideoRec/CamVid/
    22. T. Padmapriya and V. Saminadan, “Improving Throughput for Downlink Multi user MIMO-LTE Advanced Networks using SINR approximation and Hierarchical CSI feedback”, International Journal of Mobile Design Network and Innovation- Inderscience Publisher, ISSN : 1744-2850 vol. 6, no.1, pp. 14-23, May 2015.
    23. S.V.Manikanthan and K.srividhya "An Android based secure access control using ARM and cloud computing", Published in: Electronics and Communication Systems (ICECS), 2015 2nd International Conference on 26-27 Feb. 2015,Publisher: IEEE,DOI: 10.1109/ECS.2015.7124833.
    24. Rajesh, M., and J. M. Gnanasekar. "Path observation-based physical routing protocol for wireless ad hoc networks." International Journal of Wireless and Mobile Computing 11.3 (2016): 244-257.
  • Downloads

  • How to Cite

    Raghavendra, C., Kumaravel, A., & Sivasubramanian, S. (2017). Identifying images on moving objects to enhance the recognition. International Journal of Engineering and Technology, 7(1.5), 279-282. https://doi.org/10.14419/ijet.v7i1.5.9162