TY - JOUR
T1 - CT 图像的质量评估策略 图像的质量评估策略::基于预恢复图像先验信息 基于预恢复图像先验信息
AU - Gao, Qi
AU - Zhu, Manman
AU - Li, Danyang
AU - Bian, Zhaoying
AU - Ma, Jianhua
N1 - Publisher Copyright:
© 2021 Editorial Department of Journal of Southern Medical University. All rights reserved.
PY - 2021/2/20
Y1 - 2021/2/20
N2 - Objective We propose a CT IQA strategy based on the prior information of pre-restored images (PR-IQA) to improve the performance of IQA models. Methods We propose a CNN-based no-reference CT IQA strategy using the prior information of image quality features in the image restoration algorithm, which is combined with the original distorted image information into the two CNNs through the pre-restored image and the residual image. Multi-information fusion was used to improve the feature extraction ability and prediction performance of CNN. We built a CT IQA dataset based on spiral CT data published by Mayo Clinic. The performance of PR- IQA was evaluated by calculating the quantitative metrics and statistical tests. The influence of different hyperparameter settings for PR-IQA was analyzed. We then compared PR-IQA with the BASELINE model based on the single CNN to evaluate the original distorted image without reference image and other eight IQA algorithms. Results The comparative experiment results showed that the PR-IQA model based on the prior information of 3 different image restoration algorithms (BF, NLM and BM3D) was better than all the tested IQA algorithms. Compared with the BASELINE method, the proposed method showed significantly improved performance, and the mean PLCC was increased by 12.56% and SROCC by 19.95%, and RMSE was decreased by 22.77%. Conclusion The proposed PR-IQA method can make full use of the prior information of the image restoration algorithm to effectively predict the quality of CT images.
AB - Objective We propose a CT IQA strategy based on the prior information of pre-restored images (PR-IQA) to improve the performance of IQA models. Methods We propose a CNN-based no-reference CT IQA strategy using the prior information of image quality features in the image restoration algorithm, which is combined with the original distorted image information into the two CNNs through the pre-restored image and the residual image. Multi-information fusion was used to improve the feature extraction ability and prediction performance of CNN. We built a CT IQA dataset based on spiral CT data published by Mayo Clinic. The performance of PR- IQA was evaluated by calculating the quantitative metrics and statistical tests. The influence of different hyperparameter settings for PR-IQA was analyzed. We then compared PR-IQA with the BASELINE model based on the single CNN to evaluate the original distorted image without reference image and other eight IQA algorithms. Results The comparative experiment results showed that the PR-IQA model based on the prior information of 3 different image restoration algorithms (BF, NLM and BM3D) was better than all the tested IQA algorithms. Compared with the BASELINE method, the proposed method showed significantly improved performance, and the mean PLCC was increased by 12.56% and SROCC by 19.95%, and RMSE was decreased by 22.77%. Conclusion The proposed PR-IQA method can make full use of the prior information of the image restoration algorithm to effectively predict the quality of CT images.
KW - convolutional neural network
KW - image restoration algorithm
KW - no-reference CT image quality assessment
UR - https://www.scopus.com/pages/publications/85101935262
U2 - 10.12122/j.issn.1673-4254.2021.02.10
DO - 10.12122/j.issn.1673-4254.2021.02.10
M3 - 文章
C2 - 33624596
AN - SCOPUS:85101935262
SN - 1673-4254
VL - 41
SP - 230
EP - 237
JO - Nan Fang Yi Ke Da Xue Xue Bao / Journal of Southern Medical University
JF - Nan Fang Yi Ke Da Xue Xue Bao / Journal of Southern Medical University
IS - 2
ER -