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3 months ago

SliceNet: Deep Dense Depth Estimation From a Single Indoor Panorama Using a Slice-Based Representation

{Enrico Gobbetti Jens Schneider Eva Almansa Marco Agus Giovanni Pintore}

SliceNet: Deep Dense Depth Estimation From a Single Indoor Panorama Using a Slice-Based Representation

Abstract

We introduce a novel deep neural network to estimate a depth map from a single monocular indoor panorama. The network directly works on the equirectangular projection, exploiting the properties of indoor 360 images. Starting from the fact that gravity plays an important role in the design and construction of man-made indoor scenes, we propose a compact representation of the scene into vertical slices of the sphere, and we exploit long- and short-term relationships among slices to recover the equirectangular depth map. Our design makes it possible to maintain high-resolution information in the extracted features even with a deep network. The experimental results demonstrate that our method outperforms current state-of-the-art solutions in prediction accuracy, particularly for real-world data.

Benchmarks

BenchmarkMethodologyMetrics
depth-estimation-on-stanford2d3d-panoramicSliceNet
RMSE: 0.3684
absolute relative error: 0.0744

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SliceNet: Deep Dense Depth Estimation From a Single Indoor Panorama Using a Slice-Based Representation | Papers | HyperAI