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The Generalized A* Architecture

机译:通用A *体系结构

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摘要

We consider the problem of computing a lightest derivation of a global structure using a set of weighted rules. A large variety of inference problems in AI can be formulated in this framework. We generalize A* search and heuristics derived from abstractions to a broad class of lightest derivation problems. We also describe a new algorithm that searches for lightest derivations using a hierarchy of abstractions. Our generalization of A* gives a new algorithm for searching AND/OR graphs in a bottom-up fashion. We discuss how the algorithms described here provide a general architecture for addressing the pipeline problem-the problem of passing information back and forth between various stages of processing in a perceptual system. We consider examples in computer vision and natural language processing. We apply the hierarchical search algorithm to the problem of estimating the boundaries of convex objects in grayscale images and compare it to other search methods. A second set of experiments demonstrate the use of a new compositional model for finding salient curves in images.
机译:我们考虑使用一组加权规则来计算全局结构的最轻派生的问题。在此框架中可以提出AI中的各种推理问题。我们将从抽象派生的A *搜索和启发式方法推广到最轻的派生问题的广泛类别。我们还描述了一种使用抽象层次结构搜索最轻派生的新算法。我们对A *的概括给出了一种新算法,可以自下而上地搜索AND / OR图。我们讨论这里描述的算法如何提供一种通用结构来解决管道问题,即在感知系统的各个处理阶段之间来回传递信息的问题。我们考虑计算机视觉和自然语言处理中的示例。我们将分层搜索算法应用于估计灰度图像中凸对象边界的问题,并将其与其他搜索方法进行比较。第二组实验证明了使用新的成分模型来查找图像中的显着曲线。

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