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Semi-supervised Probabilistic Relaxation for Image Segmentation

机译:用于图像分割的半监督概率松弛

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In this paper, a semi-supervised approach based on probabilistic relaxation theory is presented. Focused on image segmentation, the presented technique combines two desirable properties; a very small number of labelled samples is needed and the assignment of labels is consistently performed according to our contextual information constraints. Our proposal has been tested on medical images from a dermatology application with quite promising preliminary results. Not only the unsupervised accuracies have been improved as expected but similar accuracies to other semi-supervised approach have been obtained using a considerably reduced number of labelled samples. Results have been also compared with other powerful and well-known unsupervised image segmentation techniques, improving significantly their results.
机译:本文提出了一种基于概率松弛理论的半监督方法。着重于图像分割,所提出的技术结合了两个理想的特性:仅需要少量标记的样本,并且根据我们的上下文信息约束条件一致地执行标记的分配。我们的建议已经在皮肤病学应用的医学图像上进行了测试,并获得了非常有希望的初步结果。不仅无监督的准确性得到了预期的提高,而且使用大量减少标记的样本也获得了与其他半监督方法类似的准确性。还将结果与其他功能强大且众所周知的无监督图像分割技术进行了比较,从而显着改善了结果。

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