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Bayesian hypothesis generation and verification

机译:贝叶斯假设的产生与验证

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摘要

Regarding computer vision as optimal decision making under uncertainty, a new optimization paradigm is introduced, namely, maximizing the product of the likelihood function and the posterior distribution on scene hypotheses given the results of feature extraction. Essentially this approach is a Bayesian formulation of hypothesis generation and verification. The approach is illustrated for model-based object recognition in range imagery, showing how segmentation results can optimally be incorporated into model matching. Several new match criteria for model based object recognition in range imagery are deduced from the theory.
机译:将计算机视觉作为不确定性条件下的最优决策,引入了一种新的优化范式,即根据特征提取的结果,最大化似然函数和场景假设的后验分布的乘积。本质上,这种方法是假设生成和验证的贝叶斯表述。说明了该方法用于范围图像中基于模型的对象识别,该方法显示了如何将分割结果最佳地合并到模型匹配中。从理论推导了几种新的基于距离图像中基于模型的目标识别的匹配标准。

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