YOLO Series Target Detection Technology and Application

Authors

  • Yuan Zhang

DOI:

https://doi.org/10.54097/hset.v39i.6653

Keywords:

YOLO; Target Detection; Automatic Driving; UAV Target Detection.

Abstract

Recently, YOLO is the most popular algorithm in machine learning. The algorithm has developed rapidly, and there are several versions at present. Each version of the framework is different, and they also have their own application areas. And maybe in one area, not only one version can be used. This paper summarizes the process of target detection, the structures of YOLO network. In addition, this work also analyzed the development, advantages and disadvantages of YOLO target detection. Finally, the application of YOLO in automatic driving and UAV detection are discussed. YOLO may develop faster in the future. YOLO model is a variable model, which has unique functions when detecting different things under different circumstances. At the end of the paper, the thesis is summarized, and the related research has certain reference value.

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Published

01-04-2023

How to Cite

Zhang , Y. (2023). YOLO Series Target Detection Technology and Application. Highlights in Science, Engineering and Technology, 39, 841-847. https://doi.org/10.54097/hset.v39i.6653