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Object recognition using point uncertainty regions as pose uncertainty regions

机译:使用点不确定性区域作为姿态不确定性区域的目标识别

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In this paper, a recognition algorithm based on point features is presented. In this algorithm sets of hypothesized matches between model and image points are generated. From them the pose of the object is estimated and stored in a lookup table. When two similar poses are found the pose is assumed to be correct and the hypothesis is verified. The main contribution of this paper is that poses and their uncertainties are represented by the uncertainty regions of the projections of several 3D points, which are circles in the image. These uncertainty regions are due to the measurement uncertainty of the image features, which result in uncertainty in the recovered pose. When two poses are consistent, the pairs of uncertainty regions of the same 3D point will have a non-empty intersection. The algorithm exploits the fact that these uncertainty regions can be computed easily and accurately. The algorithm has been implemented and tested on real images.
机译:本文提出了一种基于点特征的识别算法。在该算法中,生成了模型点与图像点之间的假设匹配集。根据它们,可以估算出对象的姿态并将其存储在查找表中。当找到两个相似的姿势时,假定姿势正确,并验证了假设。本文的主要贡献在于,姿势及其不确定性由几个3D点的投影的不确定区域表示,这些3D点是图像中的圆圈。这些不确定性区域归因于图像特征的测量不确定性,这导致恢复姿势的不确定性。当两个姿势一致时,同一3D点的不确定区域对将具有非空相交。该算法利用了可以轻松,准确地计算出这些不确定区域的事实。该算法已在真实图像上实现并经过测试。

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