This contribution presents a deep-learning method for extracting and fusing image information acquired from different viewpoints with the aim to produce more discriminant object features. Our approach was specifically designed to mimic the morpho-constitutional analysis used by urologists to visually classify kidney stones by inspecting the sections and surfaces of their fragments. Deep feature fusion strategies improved the results of single view extraction backbone models by more than 10\% in terms of precision of the kidney stones classification.
翻译:这一贡献为从不同角度提取和引信图像信息提供了一种深层学习方法,目的是产生更相异的物体特征,我们的方法是专门用来模仿古生物学家为对肾结石进行直观分类而使用的立宪分析,通过检查其碎片的区块和表面,深点聚变战略使单一视图提取骨干模型的结果在肾结石分类精确度方面提高了10%以上。