Monocular 3D Object Detection with Sequential Feature Association and
Depth Hint Augmentation
- URL: http://arxiv.org/abs/2011.14589v3
- Date: Wed, 2 Dec 2020 03:07:22 GMT
- Title: Monocular 3D Object Detection with Sequential Feature Association and
Depth Hint Augmentation
- Authors: Tianze Gao, Huihui Pan, Huijun Gao
- Abstract summary: FADNet is presented to address the task of monocular 3D object detection.
A dedicated depth hint module is designed to generate row-wise features named as depth hints.
The contributions of this work are validated by conducting experiments and ablation study on the KITTI benchmark.
- Score: 12.55603878441083
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Monocular 3D object detection is a promising research topic for the
intelligent perception systems of autonomous driving. In this work, a
single-stage keypoint-based network, named as FADNet, is presented to address
the task of monocular 3D object detection. In contrast to previous
keypoint-based methods which adopt identical layouts for output branches, we
propose to divide the output modalities into different groups according to the
estimating difficulty, whereby different groups are treated differently by
sequential feature association. Another contribution of this work is the
strategy of depth hint augmentation. To provide characterized depth patterns as
hints for depth estimation, a dedicated depth hint module is designed to
generate row-wise features named as depth hints, which are explicitly
supervised in a bin-wise manner. In the training stage, the regression outputs
are uniformly encoded to enable loss disentanglement. The 2D loss term is
further adapted to be depth-aware for improving the detection accuracy of small
objects. The contributions of this work are validated by conducting experiments
and ablation study on the KITTI benchmark. Without utilizing depth priors, post
optimization, or other refinement modules, our network performs competitively
against state-of-the-art methods while maintaining a decent running speed.
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