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Incorporating minimal user input into deep learning based image segmentation

机译:将最少的用户输入整合到基于深度学习的图像分割中

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Computer-assisted image segmentation techniques could help clinicians to perform the border delineation task faster with lower inter-observer variability. Recently, convolutional neural networks (CNNs) are widely used for automatic image segmentation. In this study, we used a technique to involve observer inputs for supervising CNNs to improve the accuracy of the segmentation performance. We added a set of sparse surface points as an additional input to supervise the CNNs for more accurate image segmentation. We tested our technique by applying minimal interactions to supervise the networks for segmentation of the prostate on magnetic resonance images. We used U-Net and a new network architecture that was based on U-Net (dual-input path [DIP] U-Net), and showed that our supervising technique could significantly increase the segmentation accuracy of both networks as compared to fully automatic segmentation using U-Net. We also showed DIP U-Net outperformed U-Net for supervised image segmentation. We compared our results to the measured inter-expert observer difference in manual segmentation. This comparison suggests that applying about 15 to 20 selected surface points can achieve a performance comparable to manual segmentation.
机译:计算机辅助图像分割技术可以帮助临床医生更快地执行边界描绘任务,同时降低观察者之间的差异。最近,卷积神经网络(CNN)被广泛用于自动图像分割。在这项研究中,我们使用了一种技术来让观察者参与监督CNN,以提高分割性能的准确性。我们添加了一组稀疏的表面点作为附加输入,以监督CNN以获得更准确的图像分割。我们通过应用最小限度的交互作用来监督磁共振图像上的前列腺分割网络,从而测试了我们的技术。我们使用了U-Net和基于U-Net(双输入路径[DIP] U-Net)的新网络架构,并表明与全自动相比,我们的监督技术可以显着提高两个网络的分段精度使用U-Net进行细分。我们还显示了DIP U-Net在监督图像分割方面的性能优于U-Net。我们将我们的结果与手动分割中专家之间观察到的差异进行了比较。该比较表明,应用大约15到20个选定的表面点可以实现与手动分割相当的性能。

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