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Learning Joint 2D-3D Representations for Depth Completion

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In this paper, we tackle the problem of depth completion from RGBD data. Towards this goal, we design a simple yet effective neural network block that learns to extract joint 2D and 3D features. Specifically, the block consists of two domain-specific sub-networks that apply 2D convolution on image pixels and continuous convolution on 3D points, with their output features fused in image space. We build the depth completion network simply by stacking the proposed block, which has the advantage of learning hierarchical representations that are fully fused between 2D and 3D spaces at multiple levels. We demonstrate the effectiveness of our approach on the challenging KITTI depth completion benchmark and show that our approach outperforms the state-of-the-art.

Yun Chen, Bin Yang, Ming Liang, Raquel Urtasun• 2020

Related benchmarks

TaskDatasetResultRank
Depth CompletionKITTI depth completion official (test)
RMSE (mm)752.9
154
Depth CompletionKITTI (test)
RMSE752.9
67
Depth CompletionKITTI online leaderboard (test)
MAE0.2212
48
Depth CompletionKITTI depth completion (val)
RMSE (mm)785
34
Depth CompletionKITTI-Depth
MAE221.2
27
Depth CompletionKITTI depth completion (test)
RMSE752.9
27
Depth CompletionKITTI supervised official
MAE221.2
12
Depth CompletionKITTI Depth Completion supervised track (online benchmark)
MAE (m)0.2212
10
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