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---
dataset_info:
features:
- name: image
dtype: image
- name: mask
dtype: image
splits:
- name: train
num_bytes: 840243388.6753247
num_examples: 207
- name: test
num_bytes: 97419523.32467532
num_examples: 24
download_size: 919773656
dataset_size: 937662912.0
configs:
- config_name: default
data_files:
- split: train
path: data/train-*
- split: test
path: data/test-*
license: mit
task_categories:
- mask-generation
tags:
- street
- view
- street-view
- '360'
pretty_name: 360° streets view with mask
---
# 📷 360 Clean Dataset
A dataset of **360° equirectangular images** with corresponding **binary masks** that hide the typical artifacts introduced by 360° capture, such as:
* 🚗 Vehicles (cars, bikes, etc.),
* 🧍‍♂️ The person capturing the video (cyclist, pedestrian, etc.),
* 🎥 Camera equipment or shadows appearing at the bottom of the image.
## 🧾 Description
Each sample in the dataset contains:
* `image`: the original 360° equirectangular image (2:1 aspect ratio, typically 3040×1520),
* `mask`: a binary mask of the same resolution, where white pixels (`255`) indicate areas to ignore (e.g. person, vehicle), and black pixels (`0`) represent the usable background.
The masks were **manually created**.
This dataset is particularly useful for:
* 🗺️ 3D reconstruction tasks (e.g. NeRF, Gaussian Splatting),
* 🤖 Training vision models without human-related artifacts,
* 📍 Visual geolocation from clean, unobstructed environments.
## 📁 Data Format
```python
{
"image": Image, # equirectangular 360° scene
"mask": Image # binary mask: 1 = ignore, 0 = keep
}
```
Files are matched by filename: `xxx.jpg` and `xxx_mask.png`.
## 🏷️ Possible Use Cases
* **Object removal / Inpainting**
* **Semantic Segmentation**
* **Dynamic object filtering**
* **Preprocessing for 3D or geospatial vision tasks**
The model `Jour/sam-vit-base-equirectangular-finetuned` is trained using this dataset.
## 🪪 License
This dataset is released under the **MIT**.