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Papers/Helvipad: A Real-World Dataset for Omnidirectional Stereo ...

Helvipad: A Real-World Dataset for Omnidirectional Stereo Depth Estimation

Mehdi Zayene, Jannik Endres, Albias Havolli, Charles Corbière, Salim Cherkaoui, Alexandre Kontouli, Alexandre Alahi

2024-11-27CVPR 2025 1Omnnidirectional Stereo Depth EstimationDepth CompletionStereo Depth EstimationDepth Estimation
PaperPDFCode(official)

Abstract

Despite progress in stereo depth estimation, omnidirectional imaging remains underexplored, mainly due to the lack of appropriate data. We introduce Helvipad, a real-world dataset for omnidirectional stereo depth estimation, featuring 40K video frames from video sequences across diverse environments, including crowded indoor and outdoor scenes with various lighting conditions. Collected using two 360{\deg} cameras in a top-bottom setup and a LiDAR sensor, the dataset includes accurate depth and disparity labels by projecting 3D point clouds onto equirectangular images. Additionally, we provide an augmented training set with an increased label density by using depth completion. We benchmark leading stereo depth estimation models for both standard and omnidirectional images. The results show that while recent stereo methods perform decently, a challenge persists in accurately estimating depth in omnidirectional imaging. To address this, we introduce necessary adaptations to stereo models, leading to improved performance.

Results

TaskDatasetMetricValueModel
Depth EstimationHelvipadDepth-LRCE0.388360-IGEV-Stereo
Depth EstimationHelvipadDepth-MAE1.72360-IGEV-Stereo
Depth EstimationHelvipadDepth-MARE0.13360-IGEV-Stereo
Depth EstimationHelvipadDepth-RMSE4.297360-IGEV-Stereo
Depth EstimationHelvipadDisp-LRCE0.054360-IGEV-Stereo
Depth EstimationHelvipadDisp-MAE0.188360-IGEV-Stereo
Depth EstimationHelvipadDisp-MARE0.146360-IGEV-Stereo
Depth EstimationHelvipadDisp-RMSE0.404360-IGEV-Stereo
3DHelvipadDepth-LRCE0.388360-IGEV-Stereo
3DHelvipadDepth-MAE1.72360-IGEV-Stereo
3DHelvipadDepth-MARE0.13360-IGEV-Stereo
3DHelvipadDepth-RMSE4.297360-IGEV-Stereo
3DHelvipadDisp-LRCE0.054360-IGEV-Stereo
3DHelvipadDisp-MAE0.188360-IGEV-Stereo
3DHelvipadDisp-MARE0.146360-IGEV-Stereo
3DHelvipadDisp-RMSE0.404360-IGEV-Stereo
Stereo Depth EstimationHelvipadDepth-LRCE0.388360-IGEV-Stereo
Stereo Depth EstimationHelvipadDepth-MAE1.72360-IGEV-Stereo
Stereo Depth EstimationHelvipadDepth-MARE0.13360-IGEV-Stereo
Stereo Depth EstimationHelvipadDepth-RMSE4.297360-IGEV-Stereo
Stereo Depth EstimationHelvipadDisp-LRCE0.054360-IGEV-Stereo
Stereo Depth EstimationHelvipadDisp-MAE0.188360-IGEV-Stereo
Stereo Depth EstimationHelvipadDisp-MARE0.146360-IGEV-Stereo
Stereo Depth EstimationHelvipadDisp-RMSE0.404360-IGEV-Stereo

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