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Sparsity Agnostic Depth Completion

About

We present a novel depth completion approach agnostic to the sparsity of depth points, that is very likely to vary in many practical applications. State-of-the-art approaches yield accurate results only when processing a specific density and distribution of input points, i.e. the one observed during training, narrowing their deployment in real use cases. On the contrary, our solution is robust to uneven distributions and extremely low densities never witnessed during training. Experimental results on standard indoor and outdoor benchmarks highlight the robustness of our framework, achieving accuracy comparable to state-of-the-art methods when tested with density and distribution equal to the training one while being much more accurate in the other cases. Our pretrained models and further material are available in our project page.

Andrea Conti, Matteo Poggi, Stefano Mattoccia• 2022

Related benchmarks

TaskDatasetResultRank
Depth CompletionNYU-depth-v2 official (test)
RMSE0.155
200
Depth CompletionKITTI
RMSE1.788
37
Depth CompletionNYU V2
RMSE0.292
32
Depth CompletionOverall Average (ScanNet, IBims-1, VOID, NYUv2, KITTI, DDAD)
Rank10.13
17
Depth CompletionVOID
MAE0.244
17
Depth CompletionDDAD
MAE4.578
16
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