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首页> 外文期刊>Information Sciences: An International Journal >3D object detection: Learning 3D bounding boxes from scaled down 2D bounding boxes in RGB-D images
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3D object detection: Learning 3D bounding boxes from scaled down 2D bounding boxes in RGB-D images

机译:3D对象检测:学习RGB-D图像中的缩放2D边界框中的3D边界框

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摘要

3D object detection in RGB-D images is a vast growing research area in computer vision. In this paper, we study the problems of amodal 3D object detection in RGB-D images and present an efficient 3D object detection system that can predict object location, size, and orientation. Unlike existing methods that either uses multistage point cloud processing or pre-computed segmentation mask to generate the 3D bounding boxes, we only leverage 2D region proposals for this task. Given a pair of color and depth image as input, we first predict 2D region proposals from the designed multimodal fusion region proposal networks and then we propose an efficient method to generate 3D bounding boxes from those region proposals by scaling down the 2D bounding boxes with a scale factor and project it to 3D space. We evaluate our system on challenging NYUv2 and SUN RGB-D dataset and compare with the state-of-the-art detection methods. The experimental results show that our method outperforms the state-of-the-art by a remarkable margin with faster detection time. We achieve the best results on the NYUv2 dataset on a 19-class object detection task while performing comparably faster detection performances on the SUN RGB-D dataset on a 10-class object detection task. (C) 2018 Published by Elsevier Inc.
机译:RGB-D图像中的3D对象检测是计算机视觉中的巨大生长研究区域。在本文中,我们研究了RGB-D图像中的Amodal 3D对象检测问题,并且呈现了一种可以预测对象位置,大小和方向的有效的3D对象检测系统。与使用多级点云处理或预计算机分割掩码生成3D边界框的现有方法不同,我们只利用此任务的2D区域提案。给定一对颜色和深度图像作为输入,我们首先从设计的多模式融合区域提议网络预测2D区域提案,然后我们提出了一种有效的方法,通过将2D边界框缩放到具有的2D边界框来提出从这些区域提案中生成3D边界框的有效方法规模因子并将其投射到3D空间。我们在挑战NYUv2和Sun RGB-D数据集上评估我们的系统,并与最先进的检测方法进行比较。实验结果表明,我们的方法通过具有更快的检测时间的显着余量优于最先进的余量。我们在19级对象检测任务上达到NYUV2数据集上的最佳结果,同时在10级对象检测任务上执行Sun RGB-D数据集上的相对更快的检测性能。 (c)2018年由elsevier公司发布

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