scholarly journals Analysis of Recent Re-Identification Architectures for Tracking-by-Detection Paradigm in Multi-Object Tracking

Author(s):  
Haruya Ishikawa ◽  
Masaki Hayashi ◽  
Trong Phan ◽  
Kazuma Yamamoto ◽  
Makoto Masuda ◽  
...  
2014 ◽  
Vol 8 (12) ◽  
pp. 794-803 ◽  
Author(s):  
Maha M. Azab ◽  
Ashraf S. Hussein ◽  
Howida A. Shedeed

2016 ◽  
Vol 9 (27) ◽  
Author(s):  
Kazantsev Pavel Aleksandrovich ◽  
Skribtsov Pavel Vyacheslavovich ◽  
Surikov Sergey Olegovich

Author(s):  
Shinfeng D. Lin ◽  
Tingyu Chang ◽  
Wensheng Chen

In computer vision, multiple object tracking (MOT) plays a crucial role in solving many important issues. A common approach of MOT is tracking by detection. Tracking by detection includes occlusions, motion prediction, and object re-identification. From the video frames, a set of detections is extracted for leading the tracking process. These detections are usually associated together for assigning the same identifications to bounding boxes holding the same target. In this article, MOT using YOLO-based detector is proposed. The authors’ method includes object detection, bounding box regression, and bounding box association. First, the YOLOv3 is exploited to be an object detector. The bounding box regression and association is then utilized to forecast the object’s position. To justify their method, two open object tracking benchmarks, 2D MOT2015 and MOT16, were used. Experimental results demonstrate that our method is comparable to several state-of-the-art tracking methods, especially in the impressive results of MOT accuracy and correctly identified detections.


2013 ◽  
Vol 709 ◽  
pp. 474-480
Author(s):  
Ling Xiao Yang ◽  
Hong Ge

Tracking objects in the video sequences remains challenging problems such as occlusion and changes in appearance. Recently, the tracking-by-detection framework is widely used. We propose a simple and effective framework based on tracking-by-detection to determine the target position. The main idea is to combineRandom FernsandImplicit Shape Model. By combining these two detection methods, the position of a target can be tracked even when it is not fully appeared. Experiments show significant improvement in handling 3D-motion, fast appearance change and background clutter. We only focus on one target tracking problem.


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