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首页> 外文期刊>International Journal of Computer Vision >Accurate Junction Detection and Characterization in Natural Images
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Accurate Junction Detection and Characterization in Natural Images

机译:自然图像中的准确结点检测和表征

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摘要

Accurate junction detection and characterization are of primary importance for several aspects of scene analysis, including depth recovery and motion analysis. In this work, we introduce a generic junction analysis scheme. The first asset of the proposed procedure is an automatic criterion for the detection of junctions, permitting to deal with textured parts in which no detection is expected. Second, the method yields a characterization of L-, Y- and X- junctions, including a precise computation of their type, localization and scale. Contrary to classical approaches, scale characterization does not rely on the linear scale-space. First, an a contrario approach is used to compute the meaningfulness of a junction. This approach relies on a statistical modeling of suitably normalized gray level gradients. Then, exclusion principles between junctions permit their precise characterization. We give implementation details for this procedure and evaluate its efficiency through various experiments.
机译:对于场景分析的多个方面(包括深度恢复和运动分析),准确的接合点检测和表征至关重要。在这项工作中,我们介绍了通用结分析方案。所提出程序的第一个资产是用于检测接合点的自动标准,从而允许处理预期不会检测到的带纹理的部分。其次,该方法对L,Y和X结进行了表征,包括对其类型,位置和规模的精确计算。与经典方法相反,尺度表征不依赖于线性尺度空间。首先,使用反向方法来计算路口的意义。该方法依赖于适当归一化的灰度梯度的统计模型。然后,连接点之间的排除原理允许对其进行精确表征。我们提供此程序的实施细节,并通过各种实验评估其效率。

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