首页> 外文会议>2012 19th IEEE International Conference on Image Processing. >On-line re-training and segmentation with reduction of the training set: Application to the left ventricle detection in ultrasound imaging
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On-line re-training and segmentation with reduction of the training set: Application to the left ventricle detection in ultrasound imaging

机译:在线重新训练和分割,减少训练集:在超声成像中用于左心室检测

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摘要

The segmentation of the left ventricle (LV) still constitutes an active research topic in medical image processing field. The problem is usually tackled using pattern recognition methodologies. The main difficulty with pattern recognition methods is its dependence of a large manually annotated training sets for a robust learning strategy. However, in medical imaging, it is difficult to obtain such large annotated data. In this paper, we propose an on-line semi-supervised algorithm capable of reducing the need of large training sets. The main difference regarding semi-supervised techniques is that, the proposed framework provides both an on-line retraining and segmentation, instead of on-line retraining and off-line segmentation. Our proposal is applied to a fully automatic LV segmentation with substantially reduced training sets while maintaining good segmentation accuracy.
机译:左心室(LV)的分割仍构成医学图像处理领域中一个活跃的研究主题。通常使用模式识别方法来解决该问题。模式识别方法的主要困难在于其依赖大型手动注释训练集来获得可靠的学习策略。然而,在医学成像中,难以获得如此大的注释数据。在本文中,我们提出了一种能够减少大型训练集需求的在线半监督算法。关于半监督技术的主要区别在于,所提出的框架提供了在线再训练和分段,而不是在线再训练和离线分段。我们的建议适用于大幅减少训练集的全自动LV分割,同时保持良好的分割精度。

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