从机器人观测中检索任意三维物体

Nils Bore, P. Jensfelt, John Folkesson
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引用次数: 6

摘要

研究了从大型点云数据集中检索任意对象实例的问题。其背景是自主机器人长时间运行,从数周到数月,并定期保存点云数据。不断增长的数据集合以一种允许对任何查询对象的候选示例进行排序的方式存储,以单个视图点云的形式给出,而无需访问原始数据。然后可以在第二阶段使用点云本身对排名靠前的点云进行比较。我们的方法不假设点云是分割的,也不假设要查询的对象是提前已知的。这意味着我们能够表示整个环境,但它也为检索带来了问题。为了克服这个问题,我们的方法从每个实际查询中学习,以提高搜索结果的排名。这种学习是自动的,并且只基于查询。我们展示了我们的系统,数据是由一个机器人在我们的大楼里运行了13天,自动收集的。与其他技术的比较和我们的方法的几个变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Retrieval of arbitrary 3D objects from robot observations
We have studied the problem of retrieval of arbitrary object instances from a large point cloud data set. The context is autonomous robots operating for long periods of time, weeks up to months and regularly saving point cloud data. The ever growing collection of data is stored in a way that allows ranking candidate examples of any query object, given in the form of a single view point cloud, without the need to access the original data. The top ranked ones can then be compared in a second phase using the point clouds themselves. Our method does not assume that the point clouds are segmented or that the objects to be queried are known ahead of time. This means that we are able to represent the entire environment but it also poses problems for retrieval. To overcome this our approach learns from each actual query to improve search results in terms of the ranking. This learning is automatic and based only on the queries. We demonstrate our system on data collected autonomously by a robot operating over 13 days in our building. Comparisons with other techniques and several variations of our method are shown.
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