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An Evidence-Driven Probabilistic Inference Framework for Semantic Image Understanding

机译:证据驱动的语义图像理解概率推理框架

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This work presents an image analysis framework driven by emerging evidence and constrained by the semantics expressed in an ontology. Human perception, apart from visual stimulus and pattern recognition, relies also on general knowledge and application context for understanding visual content in conceptual terms. Our work is an attempt to imitate this behavior by devising an evidence driven probabilistic inference framework using ontologies and bayesian networks. Experiments conducted for two different image analysis tasks showed improvement in performance, compared to the case where computer vision techniques act isolated from any type of knowledge or context.
机译:这项工作提出了一个图像分析框架,该框架受新出现的证据驱动,并受到本体中表达的语义的约束。除了视觉刺激和模式识别之外,人类感知还依赖于常识和应用上下文来以概念性术语理解视觉内容。我们的工作是尝试通过使用本体论和贝叶斯网络设计一个证据驱动的概率推理框架来模仿这种行为。与计算机视觉技术独立于任何类型的知识或环境进行操作的情况相比,针对两种不同的图像分析任务进行的实验显示出性能的提高。

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