Abstract

Previous research on moving object detection in traffic surveillance video has mostly adopted a single threshold to eliminate the noise caused by external environmental interference, resulting in low accuracy and low efficiency of moving object detection. Therefore, we propose a moving object detection method that considers the difference of image spatial threshold, i.e., a moving object detection method using adaptive threshold (MOD-AT for short). In particular, based on the homograph method, we first establish the mapping relationship between the geometric-imaging characteristics of moving objects in the image space and the minimum circumscribed rectangle (BLOB) of moving objects in the geographic space to calculate the projected size of moving objects in the image space, by which we can set an adaptive threshold for each moving object to precisely remove the noise interference during moving object detection. Further, we propose a moving object detection algorithm called GMM_BLOB (GMM denotes Gaussian mixture model) to achieve high-precision detection and noise removal of moving objects. The case-study results show the following: (1) Compared with the existing object detection algorithm, the median error (MD) of the MOD-AT algorithm is reduced by 1.2–11.05%, and the mean error (MN) is reduced by 1.5–15.5%, indicating that the accuracy of the MOD-AT algorithm is higher in single-frame detection; (2) in terms of overall accuracy, the performance and time efficiency of the MOD-AT algorithm is improved by 7.9–24.3%, reflecting the higher efficiency of the MOD-AT algorithm; (3) the average accuracy (MP) of the MOD-AT algorithm is improved by 17.13–44.4%, the average recall (MR) by 7.98–24.38%, and the average F1-score (MF) by 10.13–33.97%; in general, the MOD-AT algorithm is more accurate, efficient, and robust.

Highlights

  • With the rapid growth of information technology, surveillance cameras have been widely used because of their advantages of real-time performance, low cost, and efficiency

  • The general idea of a moving object detection method considering the difference of image spatial threshold is given in Section 3, and an adaptive threshold calculation method and moving object detection algorithm are derived in detail

  • Zuo et al [34] improved the accuracy of the moving object detection algorithm based on the improved Gaussian mixture model (GMM) (IGMM)

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Summary

Introduction

With the rapid growth of information technology, surveillance cameras have been widely used because of their advantages of real-time performance, low cost, and efficiency. They have become an indispensable technical means of urban management in terms of safety. It is necessary to set an adaptive threshold according to the imaging characteristics of the camera in the image space to achieve high-precision detection of moving objects. We propose an adaptive threshold-calculation method from the perspective of geographic space, taking into account the projection size, imaging characteristics, and semantic information of the object in geographic space.

Related Work
Moving object detection methods based on traditional single threshold
Moving object detection methods based on pixels or regions
Moving object detection method based on the segmented threshold
Background difference calculation
Calculation of Object Projected Size Based on Mapping Relationship
Geou3v α Wulv Geou2v
Background subtraction
Method Time
Verification of Overall Accuracy
Conclusions and Discussion
Full Text
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