TY - JOUR
T1 - Improved performance of image semantic segmentation using NASNet
AU - Kim, Hyoung Seok
AU - Yoo, Kee Youn
AU - Kim, Lae Hyun
N1 - Publisher Copyright:
© 2019 Korean Institute of Chemical Engineers. All rights reserved.
PY - 2019/4
Y1 - 2019/4
N2 - − In recent years, big data analysis has been expanded to include automatic control through reinforcement learning as well as prediction through modeling. Research on the utilization of image data is actively carried out in various industrial fields such as chemical, manufacturing, agriculture, and bio-industry. In this paper, we applied NASNet, which is an AutoML reinforced learning algorithm, to DeepU-Net neural network that modified U-Net to improve image semantic segmentation performance. We used BRATS2015 MRI data for performance verification. Simulation results show that DeepU-Net has more performance than the U-Net neural network. In order to improve the image segmentation performance, remove dropouts that are typically applied to neural networks, when the number of kernels and filters obtained through reinforcement learning in DeepU-Net was selected as a hyperparameter of neural network. The results show that the training accuracy is 0.5% and the verification accuracy is 0.3% better than DeepU-Net. The results of this study can be applied to various fields such as MRI brain imaging diagnosis, thermal imaging camera abnormality diagnosis, Nondestructive inspection diagnosis, chemical leakage monitoring, and monitoring forest fire through CCTV.
AB - − In recent years, big data analysis has been expanded to include automatic control through reinforcement learning as well as prediction through modeling. Research on the utilization of image data is actively carried out in various industrial fields such as chemical, manufacturing, agriculture, and bio-industry. In this paper, we applied NASNet, which is an AutoML reinforced learning algorithm, to DeepU-Net neural network that modified U-Net to improve image semantic segmentation performance. We used BRATS2015 MRI data for performance verification. Simulation results show that DeepU-Net has more performance than the U-Net neural network. In order to improve the image segmentation performance, remove dropouts that are typically applied to neural networks, when the number of kernels and filters obtained through reinforcement learning in DeepU-Net was selected as a hyperparameter of neural network. The results show that the training accuracy is 0.5% and the verification accuracy is 0.3% better than DeepU-Net. The results of this study can be applied to various fields such as MRI brain imaging diagnosis, thermal imaging camera abnormality diagnosis, Nondestructive inspection diagnosis, chemical leakage monitoring, and monitoring forest fire through CCTV.
KW - Brain tumor
KW - DeepU-Net
KW - Image semantic segmentation
KW - NASNet
KW - Neural network hyper-parameter
UR - https://www.scopus.com/pages/publications/85064453402
U2 - 10.9713/kcer.2019.57.2.274
DO - 10.9713/kcer.2019.57.2.274
M3 - Article
AN - SCOPUS:85064453402
SN - 0304-128X
VL - 57
SP - 274
EP - 282
JO - Korean Chemical Engineering Research
JF - Korean Chemical Engineering Research
IS - 2
ER -