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4 months ago

GeoNet: Unsupervised Learning of Dense Depth, Optical Flow and Camera Pose

Zhichao Yin; Jianping Shi

GeoNet: Unsupervised Learning of Dense Depth, Optical Flow and Camera Pose

Abstract

We propose GeoNet, a jointly unsupervised learning framework for monocular depth, optical flow and ego-motion estimation from videos. The three components are coupled by the nature of 3D scene geometry, jointly learned by our framework in an end-to-end manner. Specifically, geometric relationships are extracted over the predictions of individual modules and then combined as an image reconstruction loss, reasoning about static and dynamic scene parts separately. Furthermore, we propose an adaptive geometric consistency loss to increase robustness towards outliers and non-Lambertian regions, which resolves occlusions and texture ambiguities effectively. Experimentation on the KITTI driving dataset reveals that our scheme achieves state-of-the-art results in all of the three tasks, performing better than previously unsupervised methods and comparably with supervised ones.

Code Repositories

yzcjtr/GeoNet
Official
tf
Mentioned in GitHub
yijie0710/GeoNet_pytorch
pytorch
Mentioned in GitHub
raunaks13/GeoNet-PyTorch
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
camera-pose-estimation-on-kitti-odometryGeoNet
Absolute Trajectory Error [m]: 100.75
Average Rotational Error er[%]: 9.40
Average Translational Error et[%]: 26.31
pose-estimation-on-kitti-2015GeoNet
Average End-Point Error: 10.81

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