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Session I : AI Deep Learning

Tomato Instance Segmentation using Synthetic Data Augmentation

초록

영어

In the agricultural field, the application of deep convolutional neural networks is increasing. Especially, in the task such as harvesting, instance-level segmentation is required to target fruits. Even though a large amount of data is required to train instance segmentation, it is not easy to obtain sufficient dataset for tomatoes. Therefore, synthetic images are generated through data augmentation for tomato instance segmentation. The training is performed through small number of real images and augmented images. As a result of training from real images, the best accuracy is 73.47%. Based on the synthetic data augmentation, the best accuracy is 89.87% with the generation of maximum 3 foreground objects per an image. We also show that the results of tomato detection and instance segmentation qualitatively.

목차

Abstract
I. INTRODUCTION
II. TRAINING IMAGE DATA
A. Real image data
B. Synthetic datasets with data augmentation
III. MASK-RCNN MODEL TRAINING
A. The framework of Mask-RCNN
B. Training through actual images and composition images
IV. TRAINING RESULT
A. Actual image data training result
B. Synthetic image data training result
V. CONCLUSION
ACKNOWLEDMENTS
REFERENCES

저자정보

  • Min-Ho Jang Department of Biosystem Engineering Chungbuk National University
  • Chang-Seop Shin Department of Biosystem Engineering Chungbuk National University
  • Chung-Gi Ban Department of Intelligent Systems & Robotics Chungbuk National University
  • Youngbae Hwang Department of Intelligent Systems & Robotics Chungbuk National University

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