Abstract
Monitoring of traffic and unprecedented violence has become very much necessary in the urban as well as the rural areas, so the paper attempts to develop a CCTV surveillance for unprecedented violence and traffic monitoring. The proffered method performs the synchronization of the videos and does proper alliance employing the algorithms of motion detection and contour filtering. The steps in motion detection identifies the movement of the objects such as vehicles and unprecedented activities whereas the filtering is used to identify the object itself using its color. The synchronization and the alignment process affords to provide the details of the each objects on the scenario. The proposed algorithm is developed in Java which assists its model using its library that is open source. The validation of the proposed model was carried out using the data set acquired from real time and results were acquired. Moreover the results acquired were compared with the algorithms that were created in the early stages, the comparison proved that the proffered model was capable of obtaining a consecutive quick outcomes of 12.3912 *factor than the existing methods for the resolution of the video used in testing was 240.01x 320.01 with 40 frames per second with cameras of high definition. Further the results acquired were computed to run the application of the embedded CPU and the GPU processors.
References
Bradski, Gary. "The opencv library." Dr Dobb's J. Software Tools 25 (2000): 120-125.
Lowe, David G. "Object recognition from local scale-invariant features." In Proceedings of the seventh IEEE international conference on computer vision, vol. 2, pp. 1150-1157. Ieee, 1999.
Singh, Sanjay, A. S. Mandal, Chandra Shekhar, and Anil Vohra. "Real-time implementation of change detection for automated video surveillance system." ISRN Electronics 2013 (2013).
Smistad, Erik, Thomas L. Falch, Mohammadmehdi Bozorgi, Anne C. Elster, and Frank Lindseth. "Medical image segmentation on GPUs–A comprehensive review." Medical image analysis 20, no. 1 (2015): 1-18.
Bentley, Jon Louis. "Multidimensional binary search trees used for associative searching." Communications of the ACM 18, no. 9 (1975): 509-517.
Evangelidis, Georgios D., and Emmanouil Z. Psarakis. "Parametric image alignment using enhanced correlation coefficient maximization." IEEE Transactions on Pattern Analysis and Machine Intelligence 30, no. 10 (2008): 1858-1865.
SG, Anuradha, K. Karibasappa, and B. Eswar Reddy. "Video Segmentation For Moving Object Detection Using Local Change & Entropy Based Adaptive Window Thresholding."
Kumar, Rupesh, Sumana Gupta, and K. S. Venkatesh. "Cut scene change detection using spatio temporal video frame." In 2015 Third International Conference on Image Information Processing (ICIIP), pp. 474-479. IEEE, 2015.
Rublee, Ethan, Vincent Rabaud, Kurt Konolige, and Gary Bradski. "ORB: An efficient alternative to SIFT or SURF." In 2011 International conference on computer vision, pp. 2564-2571. Ieee, 2011.
Koresh, M. H., and J. Deva. "Computer vision based traffic sign sensing for smart transport." J. Innovative Image Process.(JIIP) 1, no. 01 (2019): 11-19.
Manoharan, Samuel. "Image Detection, Classification and Recognition for Leak Detection In Automobiles." Journal of Innovative Image Processing (JIIP) 1, no. 02 (2019): 61-70.
Shakya, Subarna. "Virtual Restoration Of Damaged Archeological Artifacts Obtained From Expeditions Using 3d Visualization." Journal of Innovative Image Processing (JIIP) 1, no. 02 (2019): 102-110.
Kumar, R. Praveen, and S. Smys. "A novel report on architecture, protocols and applications in Internet of Things (IoT)." In 2018 2nd International Conference on Inventive Systems and control (ICISC), pp. 1156-1161. IEEE, 2018.
