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Image parsing with graph grammars and Markov Random Fields applied to facade analysis

机译:图文法和马尔可夫随机场的图像解析应用于立面分析

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Existing approaches to parsing images of objects featuring complex, non-hierarchical structure rely on exploration of a large search space combining the structure of the object and positions of its parts. The latter task requires randomized or greedy algorithms that do not produce repeatable results or strongly depend on the initial solution. To address the problem we propose to model and optimize the structure of the object and position of its parts separately. We encode the possible object structures in a graph grammar. Then, for a given structure, the positions of the parts are inferred using standard MAP-MRF techniques. This way we limit the application of the less reliable greedy or randomized optimization algorithm to structure inference. We apply our method to parsing images of building facades. The results of our experiments compare favorably to the state of the art.
机译:现有的解析具有复杂,非分层结构的对象图像的方法依赖于对大型搜索空间的探索,该搜索空间将对象的结构及其部分的位置结合在一起。后一项任务需要随机或贪婪算法,这些算法不会产生可重复的结果,或者在很大程度上取决于初始解决方案。为了解决该问题,我们建议分别对对象的结构和零件的位置进行建模和优化。我们在图文法中编码可能的对象结构。然后,对于给定的结构,使用标准MAP-MRF技术推断零件的位置。这样,我们限制了不太可靠的贪婪或随机优化算法在结构推断中的应用。我们将我们的方法应用于解析建筑立面的图像。我们的实验结果可与现有技术相媲美。

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