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논문검색

Technology Convergence (TC)

Development of YOLOv5s and DeepSORT Mixed Neural Network to Improve Fire Detection Performance

원문정보

초록

영어

As urbanization accelerates and facilities that use energy increase, human life and property damage due to fire is increasing. Therefore, a fire monitoring system capable of quickly detecting a fire is required to reduce economic loss and human damage caused by a fire. In this study, we aim to develop an improved artificial intelligence model that can increase the accuracy of low fire alarms by mixing DeepSORT, which has strengths in object tracking, with the YOLOv5s model. In order to develop a fire detection model that is faster and more accurate than the existing artificial intelligence model, DeepSORT, a technology that complements and extends SORT as one of the most widely used frameworks for object tracking and YOLOv5s model, was selected and a mixed model was used and compared with the YOLOv5s model. As the final research result of this paper, the accuracy of YOLOv5s model was 96.3% and the number of frames per second was 30, and the YOLOv5s_DeepSORT mixed model was 0.9% higher in accuracy than YOLOv5s with an accuracy of 97.2% and number of frames per second: 30.

목차

Abstract
1. INTRODUCTION
2. MIXED NEURAL NETWORK MODEL DESIGN OF YOLOV5S AND DEEPSORT
3. IMPLEMENTATION OF MIXED NEURAL NETWORK MODEL OF YOLOV5S AND DEEPSORT
3.1 Dataset
3.2 Learning of the Model
3.3 Result of model test
4. CONCLUSION
REFERENCES

저자정보

  • Jong-Hyun Lee CEO, ESHEL Tree Co., Gwangju, Korea
  • Sang-Hyun Lee Associate Professor, Department of Computer Engineering, Honam University, Korea

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