Journal ArticleUnknown
3D object detection: Learning 3D bounding boxes from scaled down 2D bounding boxes in RGB-D images
Authors
Author Affiliations
Islamic University, University of Chinese Academy of Sciences, Inception Institute of Artificial Intelligence
Published InInformation Sciences
Year2018
Citations40
Abstract
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…
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