Generic Merging of Structure from Motion Maps with a Low Memory Footprint

Gabrielle Flood, David Gillsjö, Patrik Persson, A. Heyden, K. Åström
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引用次数: 1

Abstract

With the development of cheap image sensors, the amount of available image data have increased enormously, and the possibility of using crowdsourced collection methods has emerged. This calls for development of ways to handle all these data. In this paper, we present new tools that will enable efficient, flexible and robust map merging. Assuming that separate optimisations have been performed for the individual maps, we show how only relevant data can be stored in a low memory footprint representation. We use these representations to perform map merging so that the algorithm is invariant to the merging order and independent of the choice of coordinate system. The result is a robust algorithm that can be applied to several maps simultaneously. The result of a merge can also be represented with the same type of low-memory footprint format, which enables further merging and updating of the map in a hierarchical way. Furthermore, the method can perform loop closing and also detect changes in the scene between the capture of the different image sequences. Using both simulated and real data — from both a hand held mobile phone and from a drone — we verify the performance of the proposed method.
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低内存占用运动地图结构的通用合并
随着廉价图像传感器的发展,可用图像数据的数量大大增加,使用众包收集方法的可能性已经出现。这就要求开发处理所有这些数据的方法。在本文中,我们提出了新的工具,将实现高效,灵活和稳健的地图合并。假设对单个映射执行了单独的优化,我们将展示如何仅将相关数据存储在低内存占用表示中。我们使用这些表示来进行地图合并,使算法与合并顺序不变,并且与坐标系的选择无关。结果是一种可以同时应用于多个地图的鲁棒算法。合并的结果也可以用相同类型的低内存占用格式表示,这支持以分层方式进一步合并和更新映射。此外,该方法可以执行闭环,还可以检测不同图像序列捕获之间的场景变化。使用模拟和真实数据-来自手持移动电话和无人机-我们验证了所提出方法的性能。
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