基于空间正则化的多实例增强解剖地标检测

P. Swoboda, David Liu, S. Zhou
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引用次数: 3

摘要

为了减轻手工标注的负担和解决标注不精确的问题,提出了一种基于空间正则化的多实例增强方法。它有三个特点。首先是引入软最大代价函数,以更好地处理物体检测中大多数阳性袋只包含极少数真阳性的实际情况,并将ISR规则和AdaBoost作为特殊示例。二是探索如何更好地检测医学图像中嵌入的空间上下文,特别是强相关性训练实例的网格排列。这与独立处理包中的实例的传统方法形成对比。三是鼓励集中检测响应图,使最终的检测结果可以更有信心地推导出来。后两个贡献是用全变分正则化实现的。实验结果表明,该方法在检测解剖标志时的检测性能明显优于现有的检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anatomical landmark detection using multiple instance boosting with spatial regularization
We propose a novel multiple instance boosting approach with spatial regularization for detecting anatomical landmark to alleviate the manual annotation burden and to address imprecise annotations. It features three contributions. The first is the introduction of soft max cost function for better handling the practical situation in object detection that most positive bags only contain very few true positives while including the ISR rule and AdaBoost as special examples. The second is to exploit for better detection the spatial context embedded in a medical image, specifically the grid arrangement of the training instances with strong correlation. This is in contrast with conventional methods that treat instances in a bag independently. The third is to encourage a concentrated detection response map so that the final detection result can be derived with more confidence. The latter two contributions are realized using total variation regularization. Experimentally the proposed approach achieves significantly better detection performance than state-of-the-art detection methods in detecting anatomical landmarks with few or even no annotations.
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