Indoor Semantic Scene Understanding Using 2D-3D Fusion

Muraleekrishna Gopinathan, Giang Truong, Jumana Abu-Khalaf
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Abstract

Seamless Human-Robot Interaction is the ultimate goal of developing service robotic systems. For this, the robotic agents have to understand their surroundings to better complete a given task. Semantic scene understanding allows a robotic agent to extract semantic knowledge about the objects in the environment. In this work, we present a semantic scene understanding pipeline that fuses 2D and 3D detection branches to generate a semantic map of the environment. The 2D mask proposals from state-of-the-art 2D detectors are inverse-projected to the 3D space and combined with 3D detections from point segmentation networks. Unlike previous works that were evaluated on collected datasets, we test our pipeline on an active photo-realistic robotic environment BenchBot. Our novelty includes the rectification of 3D proposals using projected 2D detections and modality fusion based on object size. This work is done as part of the Robotic Vision Scene Understanding Challenge (RVSU). The performance evaluation demonstrates that our pipeline has improved on baseline methods without significant computational bottleneck.
使用2D-3D融合的室内语义场景理解
无缝人机交互是开发服务机器人系统的最终目标。为此,机器人代理必须了解它们周围的环境,以更好地完成给定的任务。语义场景理解允许机器人代理提取关于环境中对象的语义知识。在这项工作中,我们提出了一个语义场景理解管道,它融合了2D和3D检测分支来生成环境的语义地图。来自最先进的2D检测器的2D掩模建议被反投影到3D空间,并与来自点分割网络的3D检测相结合。与之前在收集的数据集上进行评估的工作不同,我们在一个活跃的逼真的机器人环境BenchBot上测试我们的管道。我们的新颖之处包括使用投影2D检测和基于物体大小的模态融合来纠正3D建议。这项工作是机器人视觉场景理解挑战赛(RVSU)的一部分。性能评估表明,我们的管道在没有显著计算瓶颈的情况下改进了基线方法。
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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