Monocular 3D Detection with Geometric Constraints Embedding and
Semi-supervised Training
- URL: http://arxiv.org/abs/2009.00764v1
- Date: Wed, 2 Sep 2020 00:51:51 GMT
- Title: Monocular 3D Detection with Geometric Constraints Embedding and
Semi-supervised Training
- Authors: Peixuan Li
- Abstract summary: We propose a novel framework for monocular 3D objects detection using only RGB images, called KM3D-Net.
We design a fully convolutional model to predict object keypoints, dimension, and orientation, and then combine these estimations with perspective geometry constraints to compute position attribute.
- Score: 3.8073142980733
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this work, we propose a novel single-shot and keypoints-based framework
for monocular 3D objects detection using only RGB images, called KM3D-Net. We
design a fully convolutional model to predict object keypoints, dimension, and
orientation, and then combine these estimations with perspective geometry
constraints to compute position attribute. Further, we reformulate the
geometric constraints as a differentiable version and embed it into the network
to reduce running time while maintaining the consistency of model outputs in an
end-to-end fashion. Benefiting from this simple structure, we then propose an
effective semi-supervised training strategy for the setting where labeled
training data is scarce. In this strategy, we enforce a consensus prediction of
two shared-weights KM3D-Net for the same unlabeled image under different input
augmentation conditions and network regularization. In particular, we unify the
coordinate-dependent augmentations as the affine transformation for the
differential recovering position of objects and propose a keypoints-dropout
module for the network regularization. Our model only requires RGB images
without synthetic data, instance segmentation, CAD model, or depth generator.
Nevertheless, extensive experiments on the popular KITTI 3D detection dataset
indicate that the KM3D-Net surpasses all previous state-of-the-art methods in
both efficiency and accuracy by a large margin. And also, to the best of our
knowledge, this is the first time that semi-supervised learning is applied in
monocular 3D objects detection. We even surpass most of the previous fully
supervised methods with only 13\% labeled data on KITTI.
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