Abstract

In this manuscript, a new method for the determination of vehicle trajectories using an optimal bounding box for the vehicle is developed. The vehicle trajectory is extracted using images acquired from a camera installed at an intersection based on a convolutional neural network (CNN). First, real-time vehicle object detection is performed using the YOLOv2 model, which is one of the most representative object detection algorithms based on CNN. To overcome the inaccuracy of the vehicle location extracted by YOLOv2, the trajectory was calibrated using a vehicle tracking algorithm such as a Kalman filter and intersection-over-union (IOU) tracker. In particular, we attempted to correct the vehicle trajectory by extracting the center position based on the geometric characteristics of a moving vehicle according to the bounding box. The quantitative and qualitative evaluations indicate that the proposed algorithm can detect the trajectories of moving vehicles better than the conventional algorithm. Although the center points of the bounding boxes obtained using the existing conventional algorithm are often outside of the vehicle due to the geometric displacement of the camera, the proposed technique can minimize positional errors and extract the optimal bounding box to determine the vehicle location.

Highlights

  • The traffic conditions of downtown or urban spaces have become a very important issue for traffic management, and intelligent transportation systems (ITSs) have been rapidly developed [1].As image processing techniques and various terrestrial sensors have been developed, the demand for a system capable of analyzing traffic conditions has increased, and ITSs have been recognized as a key technology for smart cities

  • The center coordinates of the vehicle obtained through the proposed method are compared with the center point of the bounding box extracted using the conventional algorithm

  • The conventional algorithm refers to the optimized framework using a Kalman filter and IOU tracker for object tracking based on YOLOv2 for object detection

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Summary

Introduction

The traffic conditions of downtown or urban spaces have become a very important issue for traffic management, and intelligent transportation systems (ITSs) have been rapidly developed [1].As image processing techniques and various terrestrial sensors have been developed, the demand for a system capable of analyzing traffic conditions has increased, and ITSs have been recognized as a key technology for smart cities. Inductive loop detectors and image-based detectors are mainly used as the method for collecting traffic data based on traffic information on the road [2]. To apply these data to real-time traffic analysis, inductive loop detectors require considerable labor and cost for the pavement of roads due to complex installation, maintenance, and asphalt deterioration. These instruments can be damaged by wear and tear [2]. In the case of an image-based detector, there is Sensors 2019, 19, 4263; doi:10.3390/s19194263 www.mdpi.com/journal/sensors

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