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Belief Propagation in Large, Highly Connected Graphs for 3D Part-Based Object Recognition

机译:基于3D零件的对象识别的大型高度连接图中的信仰传播

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We describe a part-based object-recognition framework, specialized to mining complex 3D objects from detailed 3D images. Objects are modeled as a collection of parts together with a pairwise potential function. An efficient inference algorithm - based on belief propagation (BP) -finds the optimal layout of parts, given some input image. We introduce AggBP, a message aggregation scheme for BP, in which groups of messages are approximated as a single message. For objects consisting of N parts, we reduce CPU time and memory requirements from O(N~2) to O(N). We apply AggBP on synthetic data as well as a real-world task identifying protein fragments in three-dimensional images. These experiments show that our improvements result in minimal loss in accuracy in significantly less time.
机译:我们描述了一种基于零件的对象识别框架,专门从详细的3D图像中挖掘复杂的3D对象。对象与配对潜在功能一起建模为零件集合。基于信仰传播(BP) - 根据一些输入图像,基于信仰传播(BP) - 零件的最佳布局。我们介绍了AGGBP,这是BP的消息聚合方案,其中消息组近似为单个消息。对于由N部分组成的对象,我们将CPU时间和内存要求从O(n〜2)降至O(n)。我们在合成数据以及真实世界任务上申请AGGBP,识别三维图像中的蛋白质片段。这些实验表明,我们的改进在明显减少的时间内精确地导致最小的损失。

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