Image Correction Methods for Regions of Interest in Liver Cirrhosis Classification on CNNs

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Abstract

The average error rate in liver cirrhosis classification on B-mode ultrasound images using the traditional pattern recognition approach is still too high. In order to improve the liver cirrhosis classification performance, image correction methods and a convolution neural network (CNN) approach are focused on. The impact of image correction methods on region of interest (ROI) images that are input into the CNN for the purpose of classifying liver cirrhosis based on data from B-mode ultrasound images is investigated. In this paper, image correction methods based on tone curves are developed. The experimental results show positive benefits from the image correction methods by improving the image quality of ROI images. By enhancing the image contrast of ROI images, the image quality improves and thus the generalization ability of the CNN also improves. In order to improve the image classification performance, image quality improvement methods are proposed for consideration.

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Mitani, Y., Fisher, R. B., Fujita, Y., Hamamoto, Y., & Sakaida, I. (2022). Image Correction Methods for Regions of Interest in Liver Cirrhosis Classification on CNNs. Sensors, 22(9). https://doi.org/10.3390/s22093378

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