Many robotics applications require interest points that are highly repeatable under varying viewpoints and lighting conditions. However, this requirement is very challenging as the environment changes continuously and indefinitely, leading to appearance changes of interest points with respect to time. This paper proposes to predict the repeatability of an interest point as a function of time, which can tell us the lifespan of the interest point considering daily or seasonal variation. The repeatability predictor (RP) is formulated as a regressor trained on repeated interest points from multiple viewpoints over a long period of time. Through comprehensive experiments, we demonstrate that our RP can estimate when a new interest point is repeated, and also highlight an insightful analysis about this problem. For further comparison, we apply our RP to the map summarization under visual localization framework, which builds a compact representation of the full context map given the query time. The experimental result shows a careful selection of potentially repeatable interest points predicted by our RP can significantly mitigate the degeneration of localization accuracy from map summarization.
翻译:许多机器人应用需要在各种观点和照明条件下高度重复的利息点。然而,随着环境的不断和无限的变化,这一要求非常具有挑战性,导致时间上的利益点的表面变化。本文件提议预测一个利益点的重复性,视时间变化而定,可以告诉我们利益点的寿命,考虑到每日或季节的变化。重复性预测器(RP)是作为长期从多重角度从多重利益点进行反复性培训的递减器制定的。通过全面试验,我们证明我们的RP可以估计新的利益点反复出现时,并突出对这一问题的深刻分析。为了进一步比较,我们将我们的RP应用于视觉定位框架下的地图汇总,根据查询时间,它能建立全背景地图的缩略图。实验结果显示,我们RP预测的潜在重复性利益点的仔细选择可以大大减轻地图拼凑的去本地化精度。