Download the SYNTHIA dataset

SYNTHIA-AL (ICCV Workshops 2019)

Description:

Dataset for active learning purposes. This is a video stream generated at 25 FPS. The classes considered in this dataset are void, sky, building, road, sidewalk, fence, vegetation, pole, car, traffic sign, pedestrian, bycicle, lanemarking, and traffic light. The provided ground truth includes instance segmentation, 2D bounding boxes, 3D bounding boxes and depth information!

For further details, please consult the following README

Data packages:
NamePackage
SYNTHIA-AL-Train SYNTHIA-AL-Train (58724 downloads )
SYNTHIA-AL-Test SYNTHIA-AL-Test (57492 downloads )
README SYNTHIA-AL-README (6932 downloads )

SYNTHIA-SF (BMVC 2017)

Description:

Video sequences subsets acquired at 5 FPS. There are 6 sequences featuring different scenarios and traffic conditions. There are 2224 images with associated ground truth used to check the accuracy of Slanted Stixels in our BMVC paper. For each sequence we provide useful information such as: left and right image, ground truth for semantic segmentation, instance segmentation, depth, and calibration parameters. The semantic classes are Cityscapes compatible, we consider: void, road, sidewalk, building, wall, fence, pole, traffic light, traffic sign, vegetation, terrain, sky, person, rider, car, truck, bus, train, motorcycle, bicycle, road lines, other, road works.

 
Related videos: slanted stixels, BMVC 2017 presentation.
Data packages:
NamePackage
SYNTHIA-SF-BMVC2017 SYNTHIA-SF-BMVC2017 (48870 downloads )

SYNTHIA-RAND (CVPR16)

Description:

This is the set containing the original 13,407 images used to perform training and domain adaptation of the models presented in our CVPR’16 paper. These images are generated as random perturbation of the world and therefore do not have temporal consistency (this is not a video stream). These images have annotations for 11 basic classes and do not have annotations for instances. The classes are: void, sky, building, road, sidewalk, fence, vegetation, pole, car, sign, pedestrian, cyclist.

 
 
Related videos: depth groundtruth, semantic segmentation groundtruth, RGB 360 deg.
 

SYNTHIA-RAND-CITYSCAPES (CVPR16)

Description:

It is a new set containing 9,000 random images with labels compatible with the CITYSCAPES test set. In addition to the CITYSCAPES test classes, we also provide other interesting ones such as lanemarking. The list of classes is: void, sky, building, road, sidewalk, fence, vegetation, pole, car, traffic sign, pedestrian, bicycle, motorcycle, parking-slot, road-work, traffic light, terrain, rider, truck, bus, train, wall, lanemarking. These images are generated as random perturbation of the virtual world, therefore no temporal consistency is provided (this is not a video stream). This set contains groundtruth for instances!

 

SYNTHIA VIDEO SEQUENCES (CVPR16)

Description:

Video subsets acquired at 5 FPS. There are 7 sequences featuring different scenarios and traffic conditions. Each of them is divided into different sub-sequences for commodity. Each sub-sequence consists of the same traffic situation but under a different weather/illumination/season condition. The current sub-sequences are: Spring, Summer, Fall, Winter, Rain, Soft-rain, Sunset, Fog, Night and Dawn. Each of these sub-sequences contains around 8,000 (1,000 x 8) images with associated ground truth. For each sub-sequence we provide useful information such as: 8 views, ground truth for semantic segmentation, instance segmentation, global camera poses, depth, and calibration parameters. In this case the semantic classes are 13: misc, sky, building, road, sidewalk, fence, vegetation, pole, car, sign, pedestrian, cyclist, lane-marking.

Data packages:
NamePakcage
Image

Highway
SYNTHIA-SEQS-01-DAWN (54869 downloads )
SYNTHIA-SEQS-01-FALL (19837 downloads )
SYNTHIA-SEQS-01-FOG (24867 downloads )
SYNTHIA-SEQS-01-NIGHT (22451 downloads )
SYNTHIA-SEQS-01-SPRING (21344 downloads )
SYNTHIA-SEQS-01-SUMMER (24164 downloads )
SYNTHIA-SEQS-01-SUNSET (7805 downloads )
SYNTHIA-SEQS-01-WINTER (14050 downloads )
SYNTHIA-SEQS-01-WINTERNIGHT (17475 downloads )
Image

New York ish
SYNTHIA-SEQS-02-DAWN (17516 downloads )
SYNTHIA-SEQS-02-FALL (9841 downloads )
SYNTHIA-SEQS-02-FOG (18350 downloads )
SYNTHIA-SEQS-02-NIGHT (18640 downloads )
SYNTHIA-SEQS-02-RAINNIGHT (6734 downloads )
SYNTHIA-SEQS-02-SOFTRAIN (14364 downloads )
SYNTHIA-SEQS-02-SPRING (17055 downloads )
SYNTHIA-SEQS-02-SUMMER (15939 downloads )
SYNTHIA-SEQS-02-SUNSET (22382 downloads )
SYNTHIA-SEQS-02-WINTER (21078 downloads )
Image

Old European Town
SYNTHIA-SEQS-04-DAWN (833084 downloads )
SYNTHIA-SEQS-04-FALL (15912 downloads )
SYNTHIA-SEQS-04-FOG (8148 downloads )
SYNTHIA-SEQS-04-NIGHT (14924 downloads )
SYNTHIA-SEQS-04-RAINNIGHT (5687 downloads )
SYNTHIA-SEQS-04-SOFTRAIN (9276 downloads )
SYNTHIA-SEQS-04-SPRING (8700 downloads )
SYNTHIA-SEQS-04-SUMMER (23031 downloads )
SYNTHIA-SEQS-04-SUNSET (18482 downloads )
SYNTHIA-SEQS-04-WINTER (17259 downloads )
SYNTHIA-SEQS-04-WINTERNIGHT (11590 downloads )
Image

New York ish
SYNTHIA-SEQS-05-DAWN (6359 downloads )
SYNTHIA-SEQS-05-FALL (6819 downloads )
SYNTHIA-SEQS-05-FOG (15200 downloads )
SYNTHIA-SEQS-05-NIGHT (11695 downloads )
SYNTHIA-SEQS-05-RAIN (20739 downloads )
SYNTHIA-SEQS-05-RAINNIGHT (26647 downloads )
SYNTHIA-SEQS-05-SOFTRAIN (8797 downloads )
SYNTHIA-SEQS-05-SPRING (16543 downloads )
SYNTHIA-SEQS-05-SUMMER (9260 downloads )
SYNTHIA-SEQS-05-SUNSET (10257 downloads )
SYNTHIA-SEQS-05-WINTER (20538 downloads )
SYNTHIA-SEQS-05-WINTERNIGHT (12468 downloads )
Image

Highway
SYNTHIA-SEQS-06-DAWN (6379 downloads )
SYNTHIA-SEQS-06-FOG (9516 downloads )
SYNTHIA-SEQS-06-NIGHT (10962 downloads )
SYNTHIA-SEQS-06-NIGHT (16602 downloads )
SYNTHIA-SEQS-06-SPRING (20464 downloads )
SYNTHIA-SEQS-06-SUMMER (12877 downloads )
SYNTHIA-SEQS-06-SUNSET (6401 downloads )
SYNTHIA-SEQS-06-WINTER (14883 downloads )
SYNTHIA-SEQS-06-WINTERNIGHT (6032 downloads )

Citation:

When using or referring to the SYNTHIA-CVPR’16 in your research, please cite our CVPR 2016 paper [ pdf ], please check our terms of use.

thumbnail of gros_cvpr16

 

@InProceedings{Ros_2016_CVPR,
author = {Ros, German and Sellart, Laura and Materzynska, Joanna and Vazquez, David and Lopez, Antonio M.},
title = {The SYNTHIA Dataset: A Large Collection of Synthetic Images for Semantic Segmentation of Urban Scenes},
booktitle = {The IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
month = {June},
year = {2016}
}

 
 
 
 
 

When using or referring to the SYNTHIA-SF in your research, please cite our BMVC 2017 paper [ pdf ], please check our terms of use.

 

Image

@InProceedings{HernandezBMVC17,
author = {Hernandez-Juarez, Daniel and Schneider, Lukas and Espinosa, Antonio and Vazquez, David and Lopez, Antonio M. and Franke, Uwe and Pollefeys, Marc and Moure, Juan Carlos},
title = {Slanted Stixels: Representing San Francisco’s Steepest Streets},
booktitle = {British Machine Vision Conference (BMVC), 2017},
year = {2017}
}

 

When using or refferring to the SYNTHIA-AL in your research, please cite our ICCV Wokshops 2019 paper [ pdf ].

 

Image

 

@InProceedings{bengarICCVW19,
author = {Zolfaghari Bengar, Javad and Gonzalez-Garcia, Abel and Villalonga, Gabriel and Raducanu, Bogdan and Aghdam, Hamed H and Mozerov, Mikhail and Lopez, Antonio M and van de Weijer, Joost},
title = {Temporal Coherence for Active Learning in Videos},
booktitle = {The IEEE International Conference in Computer Vision, Workshops (ICCV Workshops)},
year = {2019}
}