Self-Supervised Monocular Depth Estimation with Internal Feature Fusion

18 Oct 2021  ·  Hang Zhou, David Greenwood, Sarah Taylor ·

Self-supervised learning for depth estimation uses geometry in image sequences for supervision and shows promising results. Like many computer vision tasks, depth network performance is determined by the capability to learn accurate spatial and semantic representations from images. Therefore, it is natural to exploit semantic segmentation networks for depth estimation. In this work, based on a well-developed semantic segmentation network HRNet, we propose a novel depth estimation network DIFFNet, which can make use of semantic information in down and upsampling procedures. By applying feature fusion and an attention mechanism, our proposed method outperforms the state-of-the-art monocular depth estimation methods on the KITTI benchmark. Our method also demonstrates greater potential on higher resolution training data. We propose an additional extended evaluation strategy by establishing a test set of challenging cases, empirically derived from the standard benchmark.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Unsupervised Monocular Depth Estimation KITTI-C DIFFNet Absolute relative error (AbsRel) 0.188 # 5
SqRel 1.622 # 5
RMSE 6.541 # 4
RMSE log 0.280 # 5
a1 0.722 # 4
a2 0.886 # 5
a3 0.946 # 5
Monocular Depth Estimation KITTI Eigen split unsupervised DIFFNet (MS+1024x320) absolute relative error 0.094 # 6
RMSE 4.250 # 8
Sq Rel 0.678 # 8
RMSE log 0.172 # 6
Delta < 1.25 0.911 # 4
Delta < 1.25^2 0.968 # 5
Delta < 1.25^3 0.984 # 5
Mono X # 1

Methods