Name | DL | Torrents | Total Size | state-estimation [edit] | 5 | 1.19TB | 7 | 0 |
comma2k19 (10 files)
Chunk_9.zip | 9.77GB |
Chunk_8.zip | 9.63GB |
Chunk_7.zip | 9.29GB |
Chunk_6.zip | 9.53GB |
Chunk_5.zip | 9.81GB |
Chunk_3.zip | 9.41GB |
Chunk_4.zip | 9.49GB |
Chunk_2.zip | 9.05GB |
Chunk_10.zip | 9.90GB |
Chunk_1.zip | 8.73GB |
Type: Dataset
Tags: Dataset, robotics, sensor fusion, GNSS, tightly coupled, mapping
Bibtex:
Tags: Dataset, robotics, sensor fusion, GNSS, tightly coupled, mapping
Bibtex:
@article{, title= {comma2k19}, keywords= {Dataset, robotics, sensor fusion, GNSS, tightly coupled, mapping}, journal= {}, author= {Harald Schafer and Eder Santana and Andrew Haden and Riccardo Biasini}, year= {}, url= {https://github.com/commaai/comma2k19}, license= {MIT License}, abstract= {comma.ai presents comma2k19, a dataset of over 33 hours of commute in California's 280 highway. This means 2019 segments, 1 minute long each, on a 20km section of highway driving between California's San Jose and San Francisco. The dataset was collected using comma EONs that have sensors similar to those of any modern smartphone including a road-facing camera, phone GPS, thermometers and a 9-axis IMU. Additionally, the EON captures raw GNSS measurements and all CAN data sent by the car with a comma grey panda. Laika, an open-source GNSS processing library, is also introduced here. Laika produces 40% more accurate positions than the GNSS module used to collect the raw data. This dataset includes pose (position + orientation) estimates in a global reference frame of the recording camera. These poses were computed with a tightly coupled INS/GNSS/Vision optimizer that relies on data processed by Laika. comma2k19 is ideal for development and validation of tightly coupled GNSS algorithms and mapping algorithms that work with commodity sensors.}, superseded= {}, terms= {} }