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AutoShape: Real-Time Shape-Aware Monocular 3D Object Detection | IEEE Conference Publication | IEEE Xplore

AutoShape: Real-Time Shape-Aware Monocular 3D Object Detection


Abstract:

Existing deep learning-based approaches for monocular 3D object detection in autonomous driving often model the object as a rotated 3D cuboid while the object’s geometric...Show More

Abstract:

Existing deep learning-based approaches for monocular 3D object detection in autonomous driving often model the object as a rotated 3D cuboid while the object’s geometric shape has been ignored. In this work, we propose an approach for incorporating the shape-aware 2D/3D constraints into the 3D detection framework. Specifically, we employ the deep neural network to learn distinguished 2D keypoints in the 2D image domain and regress their corresponding 3D coordinates in the local 3D object coordinate first. Then the 2D/3D geometric constraints are built by these correspondences for each object to boost the detection performance. For generating the ground truth of 2D/3D keypoints, an automatic model-fitting approach has been proposed by fitting the deformed 3D object model and the object mask in the 2D image. The proposed framework has been verified on the public KITTI dataset and the experimental results demonstrate that by using additional geometrical constraints the detection performance has been significantly improved as compared to the baseline method. More importantly, the proposed framework achieves state-of-the-art performance with real time. Data and code will be available at https://github.com/zongdai/AutoShape
Date of Conference: 10-17 October 2021
Date Added to IEEE Xplore: 28 February 2022
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Conference Location: Montreal, QC, Canada
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1. Introduction

Perceiving 3D shapes and poses of surrounding obstacles is an essential task in autonomous driving (AD) perception systems. The accuracy and speed performance of 3D objection detection is important for the following motion planning and control modules in AD. Many 3D object detectors [50], [14] have been proposed, mainly for depth sensors such as LiDAR [35], [45] or stereo cameras [46], [18], which can provide the distance information of the environments directly. However, LiDAR sensors are expensive and stereo rigs suffer from on-line calibration issues. Therefore, monocular camera based 3D object detection becomes a promising direction.

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