首页> 外文会议>Intelligent Robots and Systems, 2005. (IROS 2005). 2005 IEEE/RSJ International Conference on >Multiple-object detection in natural scenes with multiple-view expectation maximization clustering
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Multiple-object detection in natural scenes with multiple-view expectation maximization clustering

机译:具有多视角期望最大化聚类的自然场景中的多目标检测

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Mobile robots and robot teams can leverage multiple views of a scene to improve the accuracy of their maps. However non-uniform noise persists even when each sensor's pose is known, and the uncertain correspondence between detections from different views complicates easy "multiple view object detection." We present an algorithm based on expectation/maximization (EM) clustering that permits a principled fusion of the views without requiring an explicit correspondence search. We demonstrate the use of this algorithm to improve mapping performance of robots in simulation and in the field.
机译:移动机器人和机器人团队可以利用场景的多个视图来提高其地图的准确性。然而,即使已知每个传感器的姿势,非均一噪声仍然存在,并且来自不同视点的检测之间的不确定性对应使简单的“多视点对象检测”复杂化。我们提出了一种基于期望/最大化(EM)聚类的算法,该算法允许视图的原则性融合,而无需明确的对应搜索。我们演示了该算法在仿真和现场中如何改善机器人的映射性能。

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