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Cosegmentation of Image Pairs by Histogram Matching - Incorporating a Global Constraint into MRFs

机译:通过直方图匹配的图像对的分割 - 将全局约束纳入MRFS

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We introduce the term cosegmentation which denotes the task of segmenting simultaneously the common parts of an image pair. A generative model for cosegmentation is presented. Inference in the model leads to minimizing an energy with an MRF term encoding spatial coherency and a global constraint which attempts to match the appearance histograms of the common parts. This energy has not been proposed previously and its optimization is challenging and NP-hard. For this problem a novel optimization scheme which we call trust region graph cuts is presented. We demonstrate that this framework has the potential to improve a wide range of research: Object driven image retrieval, video tracking and segmentation, and interactive image editing. The power of the framework lies in its generality, the common part can be a rigid/non-rigid object (or scene), observed from different viewpoints or even similar objects of the same class.
机译:我们介绍了表示分段的任务的术语分段,同时分段为图像对的公共部分。提出了一种用于分段的生成模型。模型中的推断导致利用MRF术语编码空间一致性的能量和全局约束,其试图匹配公共部分的外观直方图。此前未提出这种能量,其优化是挑战性和NP-HARD。对于此问题,提出了一种新颖的优化方案,我们呼叫信任区域图纸切割。我们展示了该框架有可能改善广泛的研究:对象驱动的图像检索,视频跟踪和分割以及交互式图像编辑。该框架的力量在于其一般性,公共部分可以是从不同的视点甚至相同类的类似对象观察到的刚性/非刚性物体(或场景)。

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