Change Detection and Object Tracking in IR Surveillance Video

Author(s):  
Mehmet Celenk ◽  
Don Venable ◽  
Mark Smearcheck ◽  
James Graham
Author(s):  
SIJUN LU ◽  
JIAN ZHANG ◽  
DAVID DAGAN FENG

This paper proposes an efficient method for detecting ghost and left objects in surveillance video, which, if not identified, may lead to errors or wasted computational power in background modeling and object tracking in video surveillance systems. This method contains two main steps: the first one is to detect stationary objects, which narrows down the evaluation targets to a very small number of regions in the input image; the second step is to discriminate the candidates between ghost and left objects. For the first step, we introduce a novel stationary object detection method based on continuous object tracking and shape matching. For the second step, we propose a fast and robust inpainting method to differentiate between ghost and left objects by reconstructing the real background using the candidate's corresponding regions in the current input and background image. The effectiveness of our method has been validated by experiments over a variety of video sequences and comparisons with existing state-of-art methods.


2019 ◽  
Vol 50 (13) ◽  
pp. 2539-2551
Author(s):  
Houssem Eddine Rouabhia ◽  
Brahim Farou ◽  
Zine Eddine Kouahla ◽  
Hamid Seridi ◽  
Herman Akdag

Author(s):  
Simon Denman ◽  
Frank Lin ◽  
Vinod Chandran ◽  
Sridha Sridharan ◽  
Clinton Fookes

The time consuming and labour intensive task of identifying individuals in surveillance video is often challenged by poor resolution and the sheer volume of stored video. Faces or identifying marks such as tattoos are often too coarse for direct matching by machine or human vision. Object tracking and super-resolution can then be combined to facilitate the automated detection and enhancement of areas of interest. The object tracking process enables the automatic detection of people of interest, greatly reducing the amount of data for super-resolution. Smaller regions such as faces can also be tracked. A number of instances of such regions can then be utilized to obtain a super-resolved version for matching. Performance improvement from super-resolution is demonstrated using a face verification task. It is shown that there is a consistent improvement of approximately 7% in verification accuracy, using both Eigenface and Elastic Bunch Graph Matching approaches for automatic face verification, starting from faces with an eye to eye distance of 14 pixels. Visual improvement in image fidelity from super-resolved images over low-resolution and interpolated images is demonstrated on a small database. Current research and future directions in this area are also summarized.


Sign in / Sign up

Export Citation Format

Share Document