Inicio  /  Algorithms  /  Vol: 13 Par: 4 (2020)  /  Artículo
ARTÍCULO
TITULO

Hierarchical-Matching-Based Online and Real-Time Multi-Object Tracking with Deep Appearance Features

Qingge Ji    
Haoqiang Yu and Xiao Wu    

Resumen

Based on tracking-by-detection, we propose a hierarchical-matching-based online and real-time multi-object tracking approach with deep appearance features, which can effectively reduce the false positives (FP) in tracking. For the purpose of increasing the accuracy rate of data association, we define the trajectory confidence using its position information, appearance information, and the information of historical relevant detections, after which we can classify the trajectories into different levels. In order to obtain discriminative appearance features, we developed a deep convolutional neural network to extract the appearance features of objects and trained it on a large-scale pedestrian re-identification dataset. Last but not least, we used the proposed diverse and hierarchical matching strategy to associate detection and trajectory sets. Experimental results on the MOT benchmark dataset show that our proposed approach performs well against other online methods, especially for the metrics of FP and frames per second (FPS).

 Artículos similares

       
 
Jian Wei and Feng Liu    
Accurate visual tracking is a challenging research topic in the field of computer vision. The challenge emanates from various issues, such as target deformation, background clutter, scale variations, and occlusion. In this setting, discriminative correla... ver más
Revista: Information

 
José Castorena, Adán Borunda, Citlalli Gaona, Alberto Martínez, Facundo Almeraya     Pág. Page 35 - 42
Based on studies with finite element method, a model able to predict the quantity of steel corrosion (rcrit) necessary for the first visible crack appearance in the surface of the concrete cover was obtained. For the finite element analysis the software ... ver más