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首页> 外文期刊>Journal of the Brazilian Society of Mechanical Sciences and Engineering >On-line SLAM using clustered landmarks with omnidirectional vision
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On-line SLAM using clustered landmarks with omnidirectional vision

机译:使用具有全向视野的聚类地标的在线SLAM

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The problem of SLAM (simultaneous localization and mapping) is a fundamental problem in autonomous robotics. It arises when a robot must create a map of the regions it has navigated while localizing itself on it, using results from one step to increase precision in another by eliminating errors inherent to the sensors. One common solution consists of establishing landmarks in the environment which are used as reference points for absolute localization estimates and form a sparse map that is iteratively refined as more information is obtained. This paper introduces a method of landmark selection and clustering in omnidirectional images for on-line SLAM, using the SIFT algorithm for initial feature extraction and assuming no prior knowledge of the environment. Visual sensors are an attractive way of collecting information from the environment, but tend to create an excessive amount of landmarks that are individually prone to false matches due to image noise and object similarities. By clustering several features in single objects, our approach eliminates landmarks that do not consistently represent the environment, decreasing computational cost and increasing the reliability of information incorporated. Tests conducted in real navigational situations show a significant improvement in performance without loss of quality.
机译:SLAM(同时定位和映射)问题是自主机器人技术的基本问题。当机器人必须在定位时在其上导航的区域创建地图时,就会出现这种情况,它使用一个步骤的结果通过消除传感器固有的误差来提高另一步骤的精度。一种常见的解决方案包括在环境中建立地标,这些地标用作绝对定位估计的参考点,并形成一个稀疏地图,随着获得更多信息,该地图将迭代地完善。本文介绍了一种用于在线SLAM的全向图像中的地标选择和聚类方法,该方法使用SIFT算法进行初始特征提取,并且假设没有先验环境知识。视觉传感器是从环境中收集信息的一种有吸引力的方式,但是往往会创建过多的地标,这些地标由于图像噪声和物体相似性而容易导致错误匹配。通过将多个特征聚集在单个对象中,我们的方法消除了不能始终代表环境的界标,从而降低了计算成本并提高了所包含信息的可靠性。在实际航行情况下进行的测试表明,性能得到了显着改善,而没有质量损失。

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