Abstract

In the research of motion video, the existing target detection methods are susceptible to changes in the motion video scene and cannot accurately detect the motion state of the target. Moving target detection technology is an important branch of computer vision technology. Its function is to implement real-time monitoring, real-time video capture, and detection of objects in the target area and store information that users are interested in as an important basis for exercise. This article focuses on how to efficiently perform motion detection on real-time video. By introducing the mathematical model of image processing, the traditional motion detection algorithm is improved and the improved motion detection algorithm is implemented in the system. This article combines the advantages of the widely used frame difference method, target detection algorithm, and background difference method and introduces the moving object detection method combining these two algorithms. When using Gaussian mixture model for modeling, improve the parts with differences, and keep the unmatched Gaussian distribution so that the modeling effect is similar to the actual background; the binary image is obtained through the difference between frames and the threshold, and the motion change domain is extracted through mathematical morphological filtering, and finally, the moving target is detected. The experiment proved the following: when there are more motion states, the recall rate is slightly better than that of the VIBE algorithm. It decreased about 0.05 or so, but the relative accuracy rate increased by about 0.12, and the increase ratio is significantly higher than the decrease ratio. Departments need to adopt effective target extraction methods. In order to improve the accuracy of moving target detection, this paper studies the method of background model establishment and target extraction and proposes its own improvement.

Highlights

  • With the maturity of computer technology, especially multimedia technology, and the processing and analysis theory of digital images, video images, as more direct and richer information carriers, are becoming more and more important research objects

  • Complexity detection and moving target tracking algorithms are the most basic components, especially target detection algorithms, which have a direct impact on the overall performance of video surveillance systems and have been a hot spot in the field of image processing and machine vision

  • In order to compare the effect and processing speed of the remote scene detection system in this article, the system in this article is compared with several common systems that use other algorithms. e main comparison algorithms are GMG algorithm, GMM detection algorithm, IMBS detection algorithm, KDE detection algorithm, and VIBE detection algorithm; the algorithm in this article is an improved VIBE detection algorithm. e video images of the experimental database are used for qualitative comparison, and these experimental data are collected for data analysis to draw conclusions

Read more

Summary

Introduction

With the maturity of computer technology, especially multimedia technology, and the processing and analysis theory of digital images, video images, as more direct and richer information carriers, are becoming more and more important research objects. E combination of embedded system and computer vision and image processing technology forms an object-oriented embedded video processing technology. Complexity detection and moving target tracking algorithms are the most basic components, especially target detection algorithms, which have a direct impact on the overall performance of video surveillance systems and have been a hot spot in the field of image processing and machine vision. Wang et al uses the interframe difference method in the detection of moving objects in the video. Is method mainly uses a Gaussian distribution to represent the characteristic value of a pixel and detects the pixel of the image. The contour of the target is detected, and the smallest bounding rectangle of the largest contour is used as the tracking frame of MeanShift, combined with the detection results to track the selected target, and the algorithm is applied to the UAV video to detect and track the target

Detection and Adaptive Video Processing of Hyperopia Scene in Sports Video
T eR eB
Hyperopia Scene Detection and Adaptive Video Processing Experiment Design
Experimental Hyperopia Scene Detection and Adaptive Video Processing
Comparison and Analysis of Detection Algorithms
Background model
Evaluation Index Analysis
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call