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Learning image quality assessment by reinforcing task amenable data selection

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 نشر من قبل Shaheer Ullah Saeed
 تاريخ النشر 2021
  مجال البحث الهندسة المعلوماتية
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In this paper, we consider a type of image quality assessment as a task-specific measurement, which can be used to select images that are more amenable to a given target task, such as image classification or segmentation. We propose to train simultaneously two neural networks for image selection and a target task using reinforcement learning. A controller network learns an image selection policy by maximising an accumulated reward based on the target task performance on the controller-selected validation set, whilst the target task predictor is optimised using the training set. The trained controller is therefore able to reject those images that lead to poor accuracy in the target task. In this work, we show that the controller-predicted image quality can be significantly different from the task-specific image quality labels that are manually defined by humans. Furthermore, we demonstrate that it is possible to learn effective image quality assessment without using a ``clean validation set, thereby avoiding the requirement for human labelling of images with respect to their amenability for the task. Using $6712$, labelled and segmented, clinical ultrasound images from $259$ patients, experimental results on holdout data show that the proposed image quality assessment achieved a mean classification accuracy of $0.94pm0.01$ and a mean segmentation Dice of $0.89pm0.02$, by discarding $5%$ and $15%$ of the acquired images, respectively. The significantly improved performance was observed for both tested tasks, compared with the respective $0.90pm0.01$ and $0.82pm0.02$ from networks without considering task amenability. This enables image quality feedback during real-time ultrasound acquisition among many other medical imaging applications.

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