Online panoptic 3D reconstruction as a Linear Assignment Problem

Leevi Raivio, Esa Rahtu
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引用次数: 0

Abstract

. Real-time holistic scene understanding would allow machines to interpret their surrounding in a much more detailed manner than is currently possible. While panoptic image segmentation methods have brought image segmentation closer to this goal, this information has to be described relative to the 3D environment for the machine to be able to utilise it effectively. In this paper, we investigate methods for sequentially reconstructing static environments from panoptic image segmentations in 3D. We specifically target real-time operation: the algorithm must process data strictly online and be able to run at relatively fast frame rates. Additionally, the method should be scalable for environments large enough for practical applications. By applying a simple but powerful data-association algorithm, we outperform earlier similar works when operating purely online. Our method is also capable of reaching frame-rates high enough for real-time applications and is scalable to larger environments as well. Source code and further demonstrations are released to the public at: https://tutvision.github.io/Online-Panoptic-3D/
作为线性分配问题的在线全视三维重建
. 实时整体场景理解将使机器能够以比目前更详细的方式解释周围环境。虽然全光图像分割方法使图像分割更接近这一目标,但必须相对于3D环境描述这些信息,以便机器能够有效地利用它。在本文中,我们研究了从三维全景图像分割中顺序重建静态环境的方法。我们特别针对实时操作:算法必须严格在线处理数据,并且能够以相对较快的帧率运行。此外,该方法应该可扩展到足够大的实际应用环境。通过应用简单但功能强大的数据关联算法,我们在纯在线操作时优于早期的类似工作。我们的方法还能够达到足够高的实时应用程序帧率,并且可以扩展到更大的环境中。源代码和进一步的演示在:https://tutvision.github.io/Online-Panoptic-3D/上向公众发布
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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