Shenoy Renuka, Rose Kenneth
IEEE Trans Image Process. 2016 Oct;25(10):4631-4640. doi: 10.1109/TIP.2016.2592702. Epub 2016 Jul 18.
Robust registration of unimodal and multimodal images is a key task in biomedical image analysis, and is often utilized as an initial step on which subsequent analysis techniques critically depend. We propose a novel probabilistic framework, based on a variant of the 2D hidden Markov model, namely, the turbo hidden Markov model, to capture the deformation between pairs of images. The hidden Markov model is tailored to capture spatial transformations across images via state transitions, and modality-specific data costs via emission probabilities. The method is derived for the unimodal setting (where simpler matching metrics may be used) as well as the multimodal setting, where different modalities may provide very different representations for a given class of objects, necessitating the use of advanced similarity measures. We utilize a rich model with hundreds of model parameters to describe the deformation relationships across such modalities. We also introduce a local edge-adaptive constraint to allow for varying degrees of smoothness between object boundaries and homogeneous regions. The parameters of the described method are estimated in a principled manner from training data via maximum likelihood learning, and the deformation is subsequently estimated using an efficient dynamic programming algorithm. Experimental results demonstrate the improved performance of the proposed approach over the state-of-the-art deformable registration techniques, on both unimodal and multimodal biomedical data sets.
单模态和多模态图像的鲁棒配准是生物医学图像分析中的一项关键任务,并且常常被用作后续分析技术所严重依赖的初始步骤。我们基于二维隐马尔可夫模型的一个变体,即Turbo隐马尔可夫模型,提出了一种新颖的概率框架,以捕捉图像对之间的变形。隐马尔可夫模型经过定制,可通过状态转移捕捉跨图像的空间变换,并通过发射概率捕捉特定模态的数据代价。该方法既适用于单模态情况(可使用更简单的匹配度量),也适用于多模态情况,在多模态情况下,不同模态对于给定类别的对象可能提供非常不同的表示,因此需要使用先进的相似性度量。我们使用一个具有数百个模型参数的丰富模型来描述跨此类模态的变形关系。我们还引入了局部边缘自适应约束,以允许对象边界和均匀区域之间具有不同程度的平滑度。所描述方法的参数通过最大似然学习从训练数据中以有原则的方式进行估计,随后使用高效的动态规划算法估计变形。实验结果表明,在单模态和多模态生物医学数据集上,所提出的方法相对于当前最先进的可变形配准技术具有更高的性能。