Two dimensional CAD-based object recognition

Cho-Huak Teh, R. Chin
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引用次数: 5

Abstract

A local feature-aggregation method for recognizing two-dimensional objects based on their CAD models is presented. The method can handle cases in which the objects are translated, rotated, scaled and occluded, and it is well suited for parallel implementation. Two types of local features, the L structures and the U structures, are extracted from the input image and matched with those of a model to search for an object similar to the model. Each of the matches hypothesizes the locations of the object in the input image, and score (similarity measure) is computed and associated with the hypothesized location to indicate the probability of the match. Matches that hypothesize the same location will have the score associated with the location incremented. A cluster of hypothesized locations with high scores indicates the probable existence of the object in the input image.<>
基于cad的二维物体识别
提出了一种基于二维物体CAD模型的局部特征聚合识别方法。该方法可以处理对象被平移、旋转、缩放和遮挡的情况,非常适合并行实现。从输入图像中提取L结构和U结构两种类型的局部特征,并与模型的局部特征进行匹配,以搜索与模型相似的对象。每个匹配都假设了输入图像中对象的位置,然后计算得分(相似度度量)并将其与假设的位置相关联,以指示匹配的概率。假设相同位置的匹配将使与该位置关联的分数增加。得分高的一组假设位置表示该物体在输入图像中可能存在。
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