Speedy Detection Module for Abandoned Belongings in Airport Using Improved Image Processing Technique
PDF

Keywords

Image processing
object detection
video surveillance
edge detection
public safety
computer vision

How to Cite

Sathesh, A., and Yasir Babiker Hamdan. 2021. “Speedy Detection Module for Abandoned Belongings in Airport Using Improved Image Processing Technique”. Journal of Trends in Computer Science and Smart Technology 3 (4): 251-62. https://doi.org/10.36548/jtcsst.2021.4.001.

Abstract

Recently, in computer vision and video surveillance applications, moving object recognition and tracking have become more popular and are hard research issues. When an item is left unattended in a video surveillance system for an extended period of time, it is considered abandoned. Detecting abandoned or removed things from complex surveillance recordings is challenging owing to various variables, including occlusion, rapid illumination changes, and so forth. Background subtraction used in conjunction with object tracking are often used in an automated abandoned item identification system, to check for certain pre-set patterns of activity that occur when an item is abandoned. An upgraded form of image processing is used in the preprocessing stage to remove foreground items. In subsequent frames with extended duration periods, static items are recognized by utilizing the contour characteristics of foreground objects. The edge-based object identification approach is used to classify the identified static items into human and nonhuman things. An alert is activated at a specific distance from the item, depending on the analysis of the stationary object. There is evidence that the suggested system has a fast reaction time and is useful for monitoring in real time. The aim of this study is to discover abandoned items in public settings in a timely manner.

PDF

References

Vivekanandam, B. "Speedy Image Crowd Counting by Light Weight Convolutional Neural Network." Journal of Innovative Image Processing 3, no. 3 (2021): 208-222.

S. Nadimi and B. Bhanu, “Physical models for moving shadow and object detection in video,” IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 26, no. 8, pp. 1079–1087, 2004.

Akey Sungheetha, Rajesh Sharma R. "Classification of Remote Sensing Image Scenes Using Double Feature Extraction Hybrid Deep Learning Approach." Journal of Information Technology 3, no. 02 (2021): 133-149.

C. N. R. Kumar and A. Bindu, “An efficient skin illumination compensation model for efficient face detection,” in Proceedings of the 32nd Annual Conference on IEEE Industrial Electronics (IECON ’06), pp. 3444–3449, November 2006.

Dhaya, R. "Light Weight CNN based Robust Image Watermarking Scheme for Security." Journal of Information Technology and Digital World 3, no. 2 (2021): 118-132.

D. Chai and K. N. Ngan, “Face segmentation using skin-color map in videophone applications,” IEEE Transactions on Circuits and Systems for Video Technology, vol. 9, no. 4, pp. 551–564, 1999.

Raj, Jennifer S., and Mr C. Vijesh Joe. "Wi-Fi Network Profiling and QoS Assessment for Real Time Video Streaming." IRO Journal on Sustainable Wireless Systems 3, no. 1 (2021): 21-30.

L. Li,W.Huang, I. Y.-H. Gu, andQ. Tian, “Statistical modelling of complex backgrounds for foreground object detection,” IEEE Transactions on Image Processing, vol. 13, no. 11, pp. 1459–1472, 2004.

Chen, Joy Iong-Zong, and Kong-Long Lai. "Deep Convolution Neural Network Model for Credit-Card Fraud Detection and Alert." Journal of Artificial Intelligence 3, no. 02 (2021): 101-112.

E. Borenstein and J. Malik, "Shape guided object segmentation," in Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, 2006, pp. 969-976.

Shakya, Subarna. "Unmanned Aerial Vehicle with Thermal Imaging for Automating Water Status in Vineyard." Journal of Electrical Engineering and Automation 3, no. 2 (2021): 79-91.

J. Wang, V. Athitsos, S. Sclaroff, and M. Betke, "Detecting objects of variable shape structure with Hidden State Shape Models," IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 30, pp. 477-492, 2008.

Sathesh, A. "Enhanced soft computing approaches for intrusion detection schemes in social media networks." Journal of Soft Computing Paradigm (JSCP) 1, no. 02 (2019): 69-79.

Y. N. Wu, Z. Si, H. Gong, and S. C. Zhu, "Learning Active Basis Model for Object Detection and Recognition," International Journal of Computer Vision, pp. 1-38, 2009.

Koresh, H. James Deva. "Quantization with perception for performance improvement in HEVC for HDR content." Journal of Innovative Image Processing (JIIP) 2, no. 01 (2020).

X. Ren, C. C. Fowlkes, and J. Malik, "Learning probabilistic models for contour completion in natural images," International Journal of Computer Vision, vol. 77, pp. 47-63, 2008.

Liao, Huei-Hung & Chang, Jing-Ying & Chen, Liang-Gee. (2008). A Localized Approach to Abandoned Luggage Detection with Foreground-Mask Sampling. 132-139. 10.1109/AVSS.2008.9.

Porikli, Fatih & Ivanov, Yuri & Tetsuji, Haga. (2007). Robust Abandoned Object Detection Using Dual Foregrounds. EURASIP Journal on Advances in Signal Processing. 2008. 10.1155/2008/197875.

Bhargava, Medha & Chen, Chia-Chih & Ryoo, M.S. & Aggarwal, J.K.. (2007). Detection of abandoned objects in crowded environments. 271-276. 10.1109/AVSS.2007.4425322.

Pan, Jiyan, Fan, Quanfu and Pankanti, Sharath. "Robust abandoned object detection using region-level analysis.." Paper presented at the meeting of the ICIP, 2011.

J. Connell, A. Senior, A. Hampapur, Y. Tian, L. Brown, S. Pankanti, “Detection and Tracking in the IBM People Vision System,”, in IEEE ICME, June 2004.

Azam, Kazi Sultana Farhana, Farhin Farhad Riya, and Shah Tuhin Ahmed. "Leaf Detection Using Histogram of Oriented Gradients (HOG), Local Binary Patterns (LBP), and Classifying with SVM Utilizing Claim Dataset." In Intelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020, pp. 313-323. Springer Singapore, 2021.

Ponmaniraj, S., Tapas Kumar, and Amit Kumar Goel. "Intrusion Detection: Spider Content Analysis to Identify Image-Based Bogus URL Navigation." In Intelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020, pp. 603-617. Springer Singapore, 2021.

Saini, Dharmender, Narina Thakur, Rachna Jain, Preeti Nagrath, Hemanth Jude, and Nitika Sharma. "Object Detection in Surveillance Using Deep Learning Methods: A Comparative Analysis." In Inventive Computation and Information Technologies, pp. 677-689. Springer, Singapore, 2021.

Indirani, M., and S. Shankar. "Spatiotemporal Particle Swarm Optimization with Incremental Deep Learning-Based Salient Multiple Object Detection." In Inventive Computation and Information Technologies, pp. 831-850. Springer, Singapore, 2021.

Rai, Shubham, and Rejo Mathew. "Adaptive Object Tracking Using Algorithms Employing Machine Learning." In International conference on Computer Networks, Big data and IoT, pp. 381-388. Springer, Cham, 2019.

Chen, Joy Iong-Zong, and Jen-Ting Chang. "Applying a 6-axis Mechanical Arm Combine with Computer Vision to the Research of Object Recognition in Plane Inspection." Journal of Artificial Intelligence 2, no. 02 (2020): 77-99.

A. Y. S. Chia, S. Rahardja, D. Rajan, and M. K. H. Leung, "Structural descriptors for category level object detection," IEEE Transactions on Multimedia, vol. 11, pp. 1407-1421, 2009.

Hamdan, Yasir Babiker, and A. Sathesh. "Construction of Efficient Smart Voting Machine with Liveness Detection Module." Journal of Innovative Image Processing 3, no. 3 (2021): 255-268.

Ramos, Ruben, Viktoriia, levers2007, Moussa81, photo_chaz, wibs24, Wicki58, et al. “Unattended Luggage Pictures, Images and Stock Photos.” iStock. https://www.istockphoto.com/ photos/unattended-luggage.