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Pano3D is a new benchmark for depth estimation from spherical panoramas. Its goal is to drive progress for this task in a consistent and holistic manner. To achieve that we generate a new dataset and integrate evaluation metrics that capture not only depth performance, but also secondary traits like boundary preservation and smoothness. Moreover, Pano3D takes a step beyond typical intra-dataset evaluation schemes to inter-dataset performance assessment. By disentangling generalization to three different axes, Pano3D facilitates proper extrapolation assessment under different out-of-training data conditions. Relying on the Pano3D holistic benchmark for 360 depth estimation we perform an extended analysis and derive a solid baseline for the task.
Dataset of color images with shifted camera domain. Corresponding depth and normal maps can found at the respective related repositories.
360, Spherical Panoramas, Computer Vision, 3D Vision, Geometry Estimation, Scene Understanding, Benchmark, Omnidirectional Dataset, Depth Estimation, Deep Learning, Indoor Scenes, Surface Orientation Estimation, Spherical Depth Estimation, Data-driven Methods
360, Spherical Panoramas, Computer Vision, 3D Vision, Geometry Estimation, Scene Understanding, Benchmark, Omnidirectional Dataset, Depth Estimation, Deep Learning, Indoor Scenes, Surface Orientation Estimation, Spherical Depth Estimation, Data-driven Methods
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