For robotic interaction in environments shared with other agents, access to volumetric and semantic maps of the scene is crucial. However, such environments are inevitably subject to long-term changes, which the map needs to account for. We thus propose panoptic multi-TSDFs as a novel representation for multi-resolution volumetric mapping in changing environments. By leveraging high-level information for 3D reconstruction, our proposed system allocates high resolution only where needed. Through reasoning on the object level, semantic consistency over time is achieved. This enables our method to maintain up-to-date reconstructions with high accuracy while improving coverage by incorporating previous data. We show in thorough experimental evaluation that our map can be efficiently constructed, maintained, and queried during online operation, and that the presented approach can operate robustly on real depth sensors using non-optimized panoptic segmentation as input.
翻译:对于与其他物剂共享环境中的机器人互动而言,获取现场的体积图和语义图至关重要,然而,这种环境不可避免地受到长期变化的影响,而地图需要说明这些变化。因此,我们提出泛光多端TSDF作为变化环境中多分辨率体积绘图的新型代表。通过利用高级信息进行3D重建,我们提议的系统只在必要时分配高分辨率。通过对目标水平的推理,在一段时间内实现语义一致性。这使得我们的方法能够维持最新的重建,同时通过纳入先前的数据来改进覆盖范围。我们在彻底的实验性评估中显示,我们的地图可以在在线操作中高效地构建、维护并询问,而且所提出的方法可以在实际深度传感器上以非优化的光谱分割作为输入进行强有力的操作。