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Probabilistic Reasoning on Object Occurrence in Complex Scenes

机译:在复杂场景中对象发生的概率推理

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The interpretation of complex scenes requires a large amount of prior knowledge and experience. To utilize prior knowledge in a computer vision or a decision support system for image interpretation, a probabilistic scene model for complex scenes is developed. In conjunction with a model of the observer's characteristics (a human interpreter or a computer vision system), it is possible to support bottom-up inference from observations to interpretation as well as to focus the attention of the observer on the most promising classes of objects. The presented Bayesian approach allows rigorous formulation of uncertainty in the models and permits manifold inferences, such as the reasoning on unobserved object occurrences in the scene. Monte-Carlo methods for approximation of expectations from the posterior distribution are presented, permitting the efficient application even for high-dimensional models. The approach is illustrated on the interpretation of airfield scenes.
机译:复杂场景的解释需要大量的先验知识和经验。为了利用计算机视觉中的先验知识或用于图像解释的决策支持系统,开发了复杂场景的概率场景模型。结合观察者特征的模型(人类解释器或计算机视觉系统),可以支持从观察到解释的自下而上推断,并将观察者注意到最有前途的物体类别中的注意力。呈现的贝叶斯方法允许严格制定模型中的不确定性,并允许歧管推断,例如在场景中未观察到的对象发生的推理。介绍了用于近似于后部分布的预期的Monte-Carlo方法,允许高效应用甚至用于高维模型。该方法是关于气田场景的解释。

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