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A Study on Fruit Quality Identification Using YOLO V2 Algorithm

원문정보

초록

영어

Currently, one of the fields leading the 4th industrial revolution is the image recognition field of artificial intelligence, which is showing good results in many fields. In this paper, using is a YOLO V2 model, which is one of the image recognition models, we intend to classify and select into three types according to the characteristics of fruits. To this end, it was designed to proceed the number of iterations of learning 9000 counts based on 640 mandarin image data of 3 classes. For model evaluation, normal, rotten, and unripe mandarin oranges were used based on images. We as a result of the experiment, the accuracy of the learning model was different depending on the number of learning. Normal mandarin oranges showed the highest at 60.5% in 9000 repetition learning, and unripe mandarin oranges also showed the highest at 61.8% in 9000 repetition learning. Lastly, rotten tangerines showed the highest accuracy at 86.0% in 7000 iterations. It will be very helpful if the results of this study are used for fruit farms in rural areas where labor is scarce.

목차

Abstract
1. INTRODUCTION
2. RESEARCH CONTENT
2.1 YOLO V2 Model
2.2 YoloV2 based tangerine classification
3. RESULT
4. CONCLUSION
REFERENCES

저자정보

  • Sang-Hyun Lee Assistant Professor., Department of Computer Engineering, Honam University, Korea

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