Abstract

Real-time multichannel video analysis is significant for intelligent transportation. Considering that deep learning and correlation filter (CF) tracking are time-consuming, a vehicle tracking method for traffic scenes is presented based on a detection-based tracking (DBT) framework. To design the model of vehicle detection, the You Only Look Once (YOLO) model is used, and then, two constraints including object attribute information and intersection over union (IOU), are combined to modify the vehicle detection box. This approach improves vehicle detection precision. In the design of tracking model, a lightweight feature extraction network model for vehicle tracking is constructed. An inception module is used in this model to reduce the computational load and increase the adaptivity of the network scale. And a squeeze-and-excitation channel attention mechanism is adopted to enhance feature learning. Regarding the object tracking strategy, the method of combining a spatial constraint and filter template matching is adopted. The observation value and prediction value are matched and corrected to achieve stable tracking of the target. Based on the interference of occlusion in target tracking, the spatial position, moving direction, and historical feature correlation of the target are comprehensively employed to achieve continuous tracking of the target.

Highlights

  • As a research hotspot in computer vision, vehicle tracking plays an important role in intelligent transportation and intelligent traffic event detection

  • 4.3.4 Real-time performance of the algorithm The main objective of this study is to provide a suitable vehicle tracking algorithm for real-time multichannel video analysis in intelligent transportation

  • 5 Conclusions In this study, an object tracker–detector combined with an object tracking algorithm was proposed for tracking vehicles in traffic scenes

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Summary

Introduction

As a research hotspot in computer vision, vehicle tracking plays an important role in intelligent transportation and intelligent traffic event detection. There are currently two main object tracking frameworks: detection-based tracking (DBT) and detectionfree tracking (DFT) [1]. DFT needs to manually initialize the tracking target, so it is only applicable to tracking a specified target and cannot automatically detect and track a new target that appears in the monitoring process. DBT integrates detection and tracking and can automatically detect the emergence of new targets or the disappearance of existing targets. DBT is capable of meet the actual requirements of the random disappearance of targets or the dynamic change of targets in the monitoring scene. Yang et al EURASIP Journal on Image and Video Processing (2020) 2020:17

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