Fusion of Deep Convolutional Neural Networks for No-Reference Magnetic Resonance Image Quality Assessment.
Igor StępieńRafał ObuchowiczAdam PiorkowskiMariusz OszustPublished in: Sensors (Basel, Switzerland) (2021)
The quality of magnetic resonance images may influence the diagnosis and subsequent treatment. Therefore, in this paper, a novel no-reference (NR) magnetic resonance image quality assessment (MRIQA) method is proposed. In the approach, deep convolutional neural network architectures are fused and jointly trained to better capture the characteristics of MR images. Then, to improve the quality prediction performance, the support vector machine regression (SVR) technique is employed on the features generated by fused networks. In the paper, several promising network architectures are introduced, investigated, and experimentally compared with state-of-the-art NR-IQA methods on two representative MRIQA benchmark datasets. One of the datasets is introduced in this work. As the experimental validation reveals, the proposed fusion of networks outperforms related approaches in terms of correlation with subjective opinions of a large number of experienced radiologists.
Keyphrases
- convolutional neural network
- magnetic resonance
- deep learning
- image quality
- artificial intelligence
- contrast enhanced
- computed tomography
- machine learning
- rna seq
- quality improvement
- mass spectrometry
- sleep quality
- depressive symptoms
- combination therapy
- single cell
- single molecule
- smoking cessation
- optical coherence tomography