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Papers/Toward Practical Monocular Indoor Depth Estimation

Toward Practical Monocular Indoor Depth Estimation

Cho-Ying Wu, Jialiang Wang, Michael Hall, Ulrich Neumann, Shuochen Su

2021-12-04CVPR 2022 1Depth EstimationMonocular Depth Estimation
PaperPDFCode(official)Code

Abstract

The majority of prior monocular depth estimation methods without groundtruth depth guidance focus on driving scenarios. We show that such methods generalize poorly to unseen complex indoor scenes, where objects are cluttered and arbitrarily arranged in the near field. To obtain more robustness, we propose a structure distillation approach to learn knacks from an off-the-shelf relative depth estimator that produces structured but metric-agnostic depth. By combining structure distillation with a branch that learns metrics from left-right consistency, we attain structured and metric depth for generic indoor scenes and make inferences in real-time. To facilitate learning and evaluation, we collect SimSIN, a dataset from simulation with thousands of environments, and UniSIN, a dataset that contains about 500 real scan sequences of generic indoor environments. We experiment in both sim-to-real and real-to-real settings, and show improvements, as well as in downstream applications using our depth maps. This work provides a full study, covering methods, data, and applications aspects.

Results

TaskDatasetMetricValueModel
Depth EstimationVA (Virtual Apartment)Absolute relative error (AbsRel)0.175DistDepth
Depth EstimationVA (Virtual Apartment)Log root mean square error (RMSE_log)0.213DistDepth
Depth EstimationVA (Virtual Apartment)Mean average error (MAE) 0.253DistDepth
Depth EstimationVA (Virtual Apartment)Root mean square error (RMSE)0.374DistDepth
Depth EstimationNYU-Depth V2 self-supervisedAbsolute relative error (AbsRel)0.13DistDepth
Depth EstimationNYU-Depth V2 self-supervisedRoot mean square error (RMSE)0.517DistDepth
Depth EstimationNYU-Depth V2 self-superviseddelta_183.2DistDepth
Depth EstimationNYU-Depth V2 self-superviseddelta_296.3DistDepth
Depth EstimationNYU-Depth V2 self-superviseddelta_399DistDepth
3DVA (Virtual Apartment)Absolute relative error (AbsRel)0.175DistDepth
3DVA (Virtual Apartment)Log root mean square error (RMSE_log)0.213DistDepth
3DVA (Virtual Apartment)Mean average error (MAE) 0.253DistDepth
3DVA (Virtual Apartment)Root mean square error (RMSE)0.374DistDepth
3DNYU-Depth V2 self-supervisedAbsolute relative error (AbsRel)0.13DistDepth
3DNYU-Depth V2 self-supervisedRoot mean square error (RMSE)0.517DistDepth
3DNYU-Depth V2 self-superviseddelta_183.2DistDepth
3DNYU-Depth V2 self-superviseddelta_296.3DistDepth
3DNYU-Depth V2 self-superviseddelta_399DistDepth

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