Optics and Photonics Journal

Volume 3, Issue 2 (June 2013)

ISSN Print: 2160-8881   ISSN Online: 2160-889X

Google-based Impact Factor: 0.76  Citations  h5-index & Ranking

Algorithm Research on Moving Object Detection of Surveillance Video Sequence

Download Download as PDF (Size: 347KB)  PP. 308-312  
DOI: 10.4236/opj.2013.32B072    4,913 Downloads   8,150 Views  Citations

ABSTRACT

In video surveillance, there are many interference factors such as target changes, complex scenes, and target deformation in the moving object tracking. In order to resolve this issue, based on the comparative analysis of several common moving object detection methods, a moving object detection and recognition algorithm combined frame difference with background subtraction is presented in this paper. In the algorithm, we first calculate the average of the values of the gray of the continuous multi-frame image in the dynamic image, and then get background image obtained by the statistical average of the continuous image sequence, that is, the continuous interception of the N-frame images are summed, and find the average. In this case, weight of object information has been increasing, and also restrains the static background. Eventually the motion detection image contains both the target contour and more target information of the target contour point from the background image, so as to achieve separating the moving target from the image. The simulation results show the effectiveness of the proposed algorithm.

Share and Cite:

K. Yang, Z. Cai and L. Zhao, "Algorithm Research on Moving Object Detection of Surveillance Video Sequence," Optics and Photonics Journal, Vol. 3 No. 2B, 2013, pp. 308-312. doi: 10.4236/opj.2013.32B072.

Cited by

[1] An Algorithm for Intelligent Identification of Moving Objects in Natural Environment
2020
[2] A Custom based IP Design for object Tracking SoC
2020
[3] Impact of Wild Birds on Agriculture at Desert Reclaimed Lands With an Evaluation of Some Safe Damage Preventive Methods
2019
[4] Real-time Multiple Vehicle Detection using a Rear Camera Mounted on a Vehicle
2018
[5] Motion Detection Algorithm for Surveillance Videos
2018
[6] Moving Object Recognition and Detection Using Background Subtraction
2018
[7] A real-time logo detection system using data offloading on mobile devices
Cyber-Physical Systems, 2018
[8] Automated decision making in road traffic monitoring by on-board unmanned aerial vehicle system
Computer Vision in Control Systems-3, 2018
[9] Out of Reach: Rhetoric of Measurement in Surveillance Photography
2017
[10] Obstacle Detection for Indoor Navigation of Mobile Robots
2017
[11] Morphological based moving object detection with background subtraction method
2017
[12] System monitoringu pomieszczeń zamkniętych oparty na zespole kamer internetowych
Zeszyty Naukowe Wydzia?u Elektrotechniki i Automatyki Politechniki Gdańskiej, 2017
[13] Comparison of Background Subtraction Methods on Near Infra-Red Spectrum Video Sequences
Procedia Engineering, 2017
[14] DETEKSI LAHAN PARKIR KOSONG DI UKDW MENGGUNAKAN PERBANDINGAN POSISI OBJEK
Bachelor thesis, Universitas Kristen Duta Wacana, 2017
[15] Development of moving object detection and tracking
2017
[16] 基于复小波光流法和利用平均算子的二次三帧差法的运动目标检测方法
青岛科技大学学报:自然科学版, 2016
[17] CUDA 并行加速的稀疏 PCNN 运动目标检测算法
计算机工程与设计, 2016
[18] Ship deformation measurement based on angular rate matching method and Quasi-static model
2016
[19] Threshold-Based Moving Object Extraction in Video Streams
2016
[20] A Real Time Image Processing Based System to Scaring the Birds from the Agricultural Field
2016
[21] Survey on Video Object Detection & Tracking
International Journal of Current Trends in Engineering & Technology, 2016
[22] Detection and Tracking of Moving Object: A Survey
International Journal of Engineering Research and Applications, 2015
[23] Research of AForge. NET in Motion Video Detection
2014
[24] SISTEM MONITOR KETERSEDIAAN JUMLAH PARKIR MOBIL MENGGUNAKAN RASPBERRY PI DI KAMPUS UKDW

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.