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Probabilistic 3D object recognition

机译:概率3D对象识别

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A probabilistic 3D object recognition algorithm is presented. In order to guide the recognition process the probability that match hypotheses between image features and model features are correct is computed. A model is developed which uses the probabilistic peaking effect of measured angles and ratios of lengths by tracing iso-angle and iso-ratio curves on the viewing sphere. The model also accounts for various types of uncertainty in the input such as incomplete and inexact edge detection. For each match hypothesis the pose of the object and the pose uncertainty which is due to the uncertainty in vertex position are recovered. This is used to find sets of hypotheses which reinforce each other by matching features of the same object with compatible uncertainty regions. A probabilistic expression is used to rank these hypothesis sets. The hypothesis sets with the highest rank are output. The algorithm has been fully implemented, and tested on real images. [References: 32]
机译:提出了一种概率3D目标识别算法。为了指导识别过程,计算了图像特征和模型特征之间的假设匹配正确的概率。开发了一个模型,该模型通过在视球上跟踪等角度和等比例曲线来使用所测角度和长度比率的概率峰值效应。该模型还考虑了输入中各种类型的不确定性,例如不完整和不精确的边缘检测。对于每个匹配假设,恢复对象的姿态和由于顶点位置的不确定性而引起的姿态不确定性。这用于查找通过使同一对象的特征与兼容的不确定性区域匹配而彼此增强的假设集。概率表达式用于对这些假设集进行排名。输出具有最高等级的假设集。该算法已完全实现,并在真实图像上进行了测试。 [参考:32]

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