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Global localization by soft object recognition from 3D Partial Views

机译:通过3D部分视图中的软对象识别进行全局定位

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Global localization is a widely studied problem, and in essence corresponds to the online robot pose estimation based on a given map with landmarks, an odometry model, and real robot sensory observations and motion. In most approaches, the map provides the position of visible objects, which are then recognized to provide the robot pose estimation. Such object recognition with noisy sensory data is challenging. In this paper, we present an effective global localization technique using soft 3D object recognition to estimate the pose with respect to the landmarks in the given map. A depth sensor acquires a partial view for each observed object, from which our algorithm extracts the robot pose relative to the objects, based on a library of 3D Partial View Heat Kernel descriptors. Our approach departs from methods that require classification and registration against complete 3D models, which are prone to errors due to noisy sensory data and object misclassifications in the recognition stage. We experimentally validate our method in different robot paths with different common 3D environment objects. We also show the improvement of our method compared to when the partial view information is not used.
机译:全局定位是一个广泛研究的问题,本质上对应于基于给定地图的在线机器人姿态估计,该地图具有界标,里程表模型以及真实的机器人感官观察和运动。在大多数方法中,地图会提供可见对象的位置,然后将其识别以提供机器人姿势估计。具有嘈杂的感觉数据的这种物体识别是具有挑战性的。在本文中,我们提出了一种有效的全局定位技术,该技术使用软3D对象识别来估计相对于给定地图中的地标的姿态。深度传感器基于3D局部视图热核描述符库,为每个观察到的对象获取局部视图,我们的算法从中提取相对于对象的机器人姿态。我们的方法不同于要求针对完整3D模型进行分类和注册的方法,该方法易于在识别阶段由于嘈杂的感官数据和对象错误分类而导致错误。我们在具有不同常见3D环境对象的不同机器人路径中实验性地验证了我们的方法。与不使用部分视图信息时相比,我们还显示了我们方法的改进。

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