基于深度学习方法的医学图像感兴趣区域的压缩与提取

Manali Gupta, Sanjay Sharma, Roshi Saxena, S. Arora, Yaduvir Singh
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引用次数: 0

摘要

任何医学图像压缩策略的目标都包括降低比特率和提高压缩效率,同时尽量保持诊断图像的质量。为了在保持图像质量的同时获得较高的压缩率,采用了基于局部区域的压缩方法。大多数医学图像都包含对诊断至关重要的感兴趣区域。然而,这些区域需要移除并以高质量重建。本文旨在描述和探索可用于提取MR脑成像感兴趣区域的深度学习技术。然后通过无损和有损技术压缩恢复和重建的高质量区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compression and Extraction of the Region of Interest from Medical Images through Deep Learning Methods
The objective of any medical image compression strategy include reducing the bit rate and increasing compression efficiency while trying to maintain the quality of diagnostic images. A partial region-based compression method is applied in order to achieve high compression rate and at the same time maintaining the image quality. Most of the medical images contain regions of interest which are critical for making the diagnoses. These regions, however, need to be removed and recreated in high quality. The present paper aims at describing and exploring deep learning techniques which can be used to extract regions of interest in MR brain imaging. The restored and the recreated high quality regions are then compressed through both lossless and lossy techniques.
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