IEEE Trans Med Imaging. 2014 Feb;33(2):258-71. doi: 10.1109/TMI.2013.2284025. Epub 2013 Oct 2.
This paper describes a novel 3-D segmentation technique posed within the Random Forests (RF) classification framework. Two improvements over the traditional RF framework are considered. Motivated by the high redundancy of feature selection in the traditional RF framework, the first contribution develops methods to improve voxel classification by selecting relatively "strong" features and neglecting "weak" ones. The second contribution involves weighting each tree in the forest during the testing stage, to provide an unbiased and more accurate decision than provided by the traditional RF. To demonstrate the improvement achieved by these enhancements, experimental validation is performed on adult brain MRI and 3-D fetal femoral ultrasound datasets. In a comparison of the new method with a traditional Random Forest, the new method showed a notable improvement in segmentation accuracy. We also compared the new method with other state-of-the-art techniques to place it in context of the current 3-D medical image segmentation literature.
本文提出了一种新颖的 3-D 分割技术,该技术基于随机森林 (RF) 分类框架。考虑了对传统 RF 框架的两个改进。受传统 RF 框架中特征选择高度冗余的启发,第一项贡献开发了通过选择相对“强”特征和忽略“弱”特征来改进体素分类的方法。第二项贡献涉及在测试阶段对森林中的每棵树进行加权,以提供比传统 RF 更准确的无偏决策。为了证明这些增强功能所带来的改进,我们在成人脑 MRI 和 3-D 胎儿股骨超声数据集上进行了实验验证。在将新方法与传统随机森林进行比较时,新方法在分割准确性方面有了显著提高。我们还将新方法与其他最先进的技术进行了比较,以便将其置于当前 3-D 医学图像分割文献的背景下。