Datasets:
id stringlengths 13 22 | rgb imagewidth (px) 4.1k 4.1k | depth imagewidth (px) 4.1k 4.1k | depth_viz imagewidth (px) 4.1k 4.1k | mask imagewidth (px) 4.1k 4.1k |
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Albisrieden- s001 | ||||
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Hönggerberg 1- s001 | ||||
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MFOPark- s001 | ||||
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MFOPark- s009 | ||||
Opfikon- s001 | ||||
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Opfikon- s015 | ||||
Velopalast- s001 | ||||
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Velopalast- s012 | ||||
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Velopalast- s014 |
🗃️ ZüriPano Dataset
ZüriPano is a real-world outdoor panoramic depth benchmark, captured with the Leica RTC360 LiDAR scanner (8K capture, 130 m effective range, HDR + automated double-scan for transient-occlusion removal). It contains 100 equirectangular panoramas across 11 urban locations in Zürich, each paired with a dense metric depth map and a validity mask. It is used as the outdoor evaluation benchmark for PaGeR.
Dataset Summary
- Content: 100 outdoor scans across 11 Zürich locations, evaluation only.
- Modality: RGB (JPG), Depth (16-bit PNG, meters via scale factor), Validity Mask (8-bit PNG), Depth Viz (8-bit Spectral RGB PNG, preview only).
- Resolution: 4096 × 2048 equirectangular (ERP).
- Use Case: Evaluating long-range outdoor panoramic depth estimation.
Data Structure
A single test split with 100 rows, one per panorama. Each row carries:
| Column | Type | Description |
|---|---|---|
id |
string |
Sample id (<Location>- s<NNN>). |
rgb |
Image |
8-bit equirectangular RGB (4096 × 2048, JPG-encoded). |
depth |
Image |
16-bit single-channel PNG, (2048, 4096). Decode to meters as np.asarray(img, dtype=np.float32) * (200.0 / 65535.0). Invalid pixels are 0.0. |
depth_viz |
Image |
8-bit RGB PNG, Spectral-colormapped log-depth (per-sample min/max stretch, median-filtered). Preview only — do NOT use for metrics or training; decode depth instead. |
mask |
Image |
8-bit single-channel PNG, (2048, 4096). Decode as np.asarray(img, dtype=bool) (255 → True). True = reliable pixel; False = sky, no-return, or specular surface (glass façades). Always apply when computing depth metrics. |
How to Use
import numpy as np
from datasets import load_dataset
ds = load_dataset("prs-eth/ZuriPano", split="test")
sample = ds[0]
rgb = sample["rgb"] # PIL.Image, (W=4096, H=2048)
depth = np.asarray(sample["depth"], dtype=np.float32) * (200.0 / 65535.0) # (2048, 4096) float32, meters
mask = np.asarray(sample["mask"], dtype=bool) # (2048, 4096) bool
# Always apply the mask before computing depth metrics
valid_depth = depth[mask]
License
ZüriPano is released under the Creative Commons Attribution 4.0 International License (CC BY-4.0). You are free to share and adapt it for any purpose, including commercial use, as long as you attribute the PaGeR Authors and the ZüriPano dataset.
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Panorama Geometry Reconstruction • 6 items • Updated