Vehicle Object Detection Based on Deep Learning

Authors

  • Zhaoming Zhou
  • Hui Li

DOI:

https://doi.org/10.54097/ajst.v5i1.5302

Keywords:

Deep learning, Vehicle detection, OpenCV, SSD algorithm.

Abstract

With the continuous improvement of science and technology and living standards, cars have become a necessary means of transportation for people to travel, which is bound to be followed by traffic accidents, so it is particularly necessary to detect or identify cars. Aiming at the above problems, this paper focuses on the application of deep learning in vehicle recognition problems, and is committed to finding a vehicle recognition algorithm with high recognition rate and stability. This paper focuses on the analysis of SSD algorithm and its basic theory convolutional neural network. Finally, this paper uses the pictures of stationary vehicles and a film video respectively to identify the stationary and moving state of vehicles. In the process of image recognition, the rationality and accuracy of the proposed method are verified according to the accuracy rate given above the image.

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References

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Published

28-02-2023

Issue

Section

Articles

How to Cite

Zhou, Z., & Li, H. (2023). Vehicle Object Detection Based on Deep Learning. Academic Journal of Science and Technology, 5(1), 38-45. https://doi.org/10.54097/ajst.v5i1.5302