基于贝叶斯网络的多上下文信息集成图像分割

Lei Zhang, Q. Ji
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引用次数: 10

摘要

我们提出了一种贝叶斯网络(BN)模型来整合多个上下文信息和图像测量,用于图像分割。BN模型系统地编码区域、边缘和顶点之间的上下文关系,以及它们具有不确定性的图像测量。它允许执行原则性的概率推理,以便通过BN模型中的最可能解释(MPE)推理实现图像分割。我们在Weizmann数据集中的马图像上取得了令人鼓舞的结果。我们还展示了扩展BN模型的可能方法,以便纳入其他上下文信息,如全局对象形状和人为干预,以改善图像分割。在BN模型中,人为干预被编码为新的证据。其影响通过信念传播传播,更新整个模型的状态。从更新的BN模型,产生新的图像分割。
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Integration of multiple contextual information for image segmentation using a Bayesian Network
We propose a Bayesian network (BN) model to integrate multiple contextual information and the image measurements for image segmentation. The BN model systematically encodes the contextual relationships between regions, edges and vertices, as well as their image measurements with uncertainties. It allows a principled probabilistic inference to be performed so that image segmentation can be achieved through a most probable explanation (MPE) inference in the BN model. We have achieved encouraging results on the horse images from the Weizmann dataset. We have also demonstrated the possible ways to extend the BN model so as to incorporate other contextual information such as the global object shape and human intervention for improving image segmentation. Human intervention is encoded as new evidence in the BN model. Its impact is propagated through belief propagation to update the states of the whole model. From the updated BN model, new image segmentation is produced.
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