首页> 外文会议>Neural Engineering, 2009. NER '09 >Bayesian transduction and Markov conditional mixtures for spatiotemporal interactive segmentation
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Bayesian transduction and Markov conditional mixtures for spatiotemporal interactive segmentation

机译:贝叶斯转导和马尔可夫条件混合的时空交互式分割

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In this paper we propose a novel transductive learning machine for spatiotemporal classification casted as an interactive segmentation problem. We present Markov conditional mixtures of naive Bayes models with spatiotemporal regularization constraints in a transductive learning and inference framework. The proposed model extends on previous work to account for non independent and identically distributed (i.i.d.) sequential data by imposing the learning and inference problem w.r.t. time. The multimodal mixture assumption on the class-conditional likelihood for each covariate feature domain in conjunction with spatiotemporal regularization constraints allow us to explain more complex distributions required for classification in multimodal longitudinal brain imagery. We evaluate the proposed algorithm on multimodal temporal MRI brain images using ROC statistics and report preliminary results.
机译:在本文中,我们提出了一种新颖的跨时空学习机,用于时空分类,它是一种交互式分割问题。我们提出了在转导学习和推理框架中时空正则化约束的朴素贝叶斯模型的马尔可夫条件混合。所提出的模型扩展了先前的工作,通过施加学习和推理问题w.r.t.来解决非独立且分布均匀(即i.d.)的顺序数据。时间。关于每个协变量特征域的类条件条件似然的多峰混合假设,结合时空正则约束,使我们能够解释在多峰纵向脑图像中进行分类所需的更复杂的分布。我们使用ROC统计数据评估在多模式颞部MRI脑图像上提出的算法,并报告初步结果。

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