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Constructing Canonical Regions for Fast and Effective View Selection

机译:构造规范区域以快速有效地选择视图

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In view selection, little work has been done for optimizing the search process, views must be densely distributed and checked individually. Thus, evaluating poor views wastes much time, and a poor view may even be misidentified as a best one. In this paper, we propose a search strategy by identifying the regions that are very likely to contain best views, referred to as canonical regions. It is by decomposing the model under investigation into meaningful parts, and using the canonical views of these parts to generate canonical regions. Applying existing view selection methods in the canonical regions can not only accelerate the search process but also guarantee the quality of obtained views. As a result, when our canonical regions are used for searching N-best views during comprehensive model analysis, we can attain greater search speed and reduce the number of views required. Experimental results show the effectiveness of our method.
机译:在视图选择中,为优化搜索过程所做的工作很少,视图必须密集分布并单独检查。因此,评估较差的视图会浪费很多时间,而较差的视图甚至可能被误认为是最佳视图。在本文中,我们通过确定极有可能包含最佳视图的区域(称为规范区域)来提出搜索策略。它是通过将要研究的模型分解为有意义的部分,并使用这些部分的规范视图来生成规范区域。在规范区域中应用现有的视图选择方法不仅可以加快搜索过程,而且可以保证获得的视图的质量。结果,当我们的规范区域用于在全面模型分析期间搜索N个最佳视图时,我们可以获得更快的搜索速度并减少所需的视图数量。实验结果表明了该方法的有效性。

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