GOPE: Geometry-Aware Optimal Viewpoint Path Estimation Using a Monocular Camera

Nuri Kim, Yunho Choi, Minjae Kang, Songhwai Oh
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Abstract

The goal of the optimal viewpoint path estimation is to generate a path to the optimal viewpoint location where the robot can best see the Point of Interest (POI). There are several learning-based methods to find an optimal viewpoint, but these methods are limited to a specific object POI and it is necessary to newly learn in a situation where a new POI is added, and not robust to the environment changes. In this paper, we propose an algorithm that generates a path to the optimal viewpoint by using the geometrical features of the environment in the situation where the target POI is in the field of view. This method makes it easy to add new POIs and is robust to environmental changes because it uses semantic and geometric information. We assume that the robot can make a simple estimation of the geometric characteristics of the surrounding environment by using pretrained networks or by using sensor values. We collected the Kwanjeong street dataset for testing our algorithm. In this dataset, the distance accuracy of our method to reach the optimal viewpoint of the POI achieved 81.8% and 70.9% for template matching accuracy.
基于单目摄像机的几何感知最佳视点路径估计
最优视点路径估计的目标是生成一条通往机器人最能看到兴趣点的最优视点位置的路径。有几种基于学习的方法可以找到最优视点,但这些方法仅限于特定的对象POI,并且需要在添加新POI的情况下重新学习,并且对环境变化不具有鲁棒性。在本文中,我们提出了一种算法,该算法在目标POI位于视场的情况下,利用环境的几何特征生成通往最佳视点的路径。该方法易于添加新的poi,并且由于使用了语义和几何信息,因此对环境变化具有鲁棒性。我们假设机器人可以通过使用预训练的网络或传感器值对周围环境的几何特征进行简单的估计。我们收集了关井街道数据集来测试我们的算法。在该数据集中,我们的方法达到POI最佳视点的距离精度达到81.8%,模板匹配精度达到70.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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