内镜图像的肾内多孔分割研究

Yu Zhao, Rui Li, Minghui Han, Gongping Chen, Yu Dai, Jianxun Zhang
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引用次数: 0

摘要

三维多孔结构是医学外科领域常见的场景。然而,内窥镜成像分辨率较低,且其场景纹理特征较弱,噪声较大,导致传统算法难以分割多孔结构。本研究提出了一种有效分割内镜图像中肾内多孔区域的新方法。该方法首先根据颜色特征直方图得出的统计向量将图像分为深、浅两组;然后对每一组,采用改进的U-Net学习策略,在像素级提取肾内多孔区域,得到准确的分割结果。并结合输尿管镜钬激光碎石的临床资料,评价了本工作的有效性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study on Intrarenal Porous Segmentation of Endoscopic Images
The three-dimensional porous structure is a common scene in the field of medical surgery. However, the imaging resolution of the endoscope is low, and its scene has weak texture features and high noise, which leads it difficult for traditional algorithms to segment the porous structure. In this study, a new approach for efficient segmentation of intrarenal porous areas in endoscopic images is put forward. The proposed method first classifies the images into deep and shallow groups based on the statistical vectors derived from the color feature histogram. Then for each group, the improved U-Net learning strategy is used to extract the intrarenal porous areas at the pixel level, and its segmentation results could be accurately obtained. The effectiveness and accuracy of this work are evaluated on the data of the ureteroscopic holmium laser lithotripsy.
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