Disp R-CNN: Stereo 3D Object Detection via Shape Prior Guided Instance Disparity Estimation

CVPR(2020)

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摘要
In this paper, we propose a novel system named Disp R-CNN for 3D object detection from stereo images. Many recent works solve this problem by first recovering a point cloud with disparity estimation and then apply a 3D detector. The disparity map is computed for the entire image, which is costly and fails to leverage category-specific prior. In contrast, we design an instance disparity estimation network (iDispNet) that predicts disparity only for pixels on objects of interest and learns a category-specific shape prior for more accurate disparity estimation. To address the challenge from scarcity of disparity annotation in training, we propose to use a statistical shape model to generate dense disparity pseudo-ground-truth without the need of LiDAR point clouds, which makes our system more widely applicable. Experiments on the KITTI dataset show that, even when LiDAR ground-truth is not available at training time, Disp R-CNN achieves competitive performance and outperforms previous state-of-the-art methods by 20% in terms of average precision.
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关键词
shape prior guided instance disparity estimation,stereo 3D object detection,LiDAR ground-truth,LiDAR point clouds,dense disparity pseudoground-truth,statistical shape model,disparity annotation,category-specific shape,instance disparity estimation network,disparity map,stereo images,Disp R-CNN
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