The dataset viewer is not available for this subset.
Exception: SplitsNotFoundError Message: The split names could not be parsed from the dataset config. Traceback: Traceback (most recent call last): File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/inspect.py", line 298, in get_dataset_config_info for split_generator in builder._split_generators( File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/packaged_modules/folder_based_builder/folder_based_builder.py", line 119, in _split_generators analyze(archives, downloaded_dirs, split_name) File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/packaged_modules/folder_based_builder/folder_based_builder.py", line 93, in analyze for downloaded_dir_file in dl_manager.iter_files(downloaded_dir): File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/utils/track.py", line 50, in __iter__ for x in self.generator(*self.args): File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/utils/file_utils.py", line 1363, in _iter_from_urlpaths if xisfile(urlpath, download_config=download_config): File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/utils/file_utils.py", line 746, in xisfile fs, *_ = url_to_fs(path, **storage_options) File "/src/services/worker/.venv/lib/python3.9/site-packages/fsspec/core.py", line 395, in url_to_fs fs = filesystem(protocol, **inkwargs) File "/src/services/worker/.venv/lib/python3.9/site-packages/fsspec/registry.py", line 293, in filesystem return cls(**storage_options) File "/src/services/worker/.venv/lib/python3.9/site-packages/fsspec/spec.py", line 80, in __call__ obj = super().__call__(*args, **kwargs) File "/src/services/worker/.venv/lib/python3.9/site-packages/fsspec/implementations/zip.py", line 62, in __init__ self.zip = zipfile.ZipFile( File "/usr/local/lib/python3.9/zipfile.py", line 1266, in __init__ self._RealGetContents() File "/usr/local/lib/python3.9/zipfile.py", line 1329, in _RealGetContents endrec = _EndRecData(fp) File "/usr/local/lib/python3.9/zipfile.py", line 286, in _EndRecData return _EndRecData64(fpin, -sizeEndCentDir, endrec) File "/usr/local/lib/python3.9/zipfile.py", line 232, in _EndRecData64 raise BadZipFile("zipfiles that span multiple disks are not supported") zipfile.BadZipFile: zipfiles that span multiple disks are not supported The above exception was the direct cause of the following exception: Traceback (most recent call last): File "/src/services/worker/src/worker/job_runners/config/split_names.py", line 65, in compute_split_names_from_streaming_response for split in get_dataset_split_names( File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/inspect.py", line 352, in get_dataset_split_names info = get_dataset_config_info( File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/inspect.py", line 303, in get_dataset_config_info raise SplitsNotFoundError("The split names could not be parsed from the dataset config.") from err datasets.inspect.SplitsNotFoundError: The split names could not be parsed from the dataset config.
Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.
Monado SLAM Datasets
The Monado SLAM datasets (MSD), are egocentric visual-inertial SLAM datasets recorded to improve the Basalt-based inside-out tracking component of the Monado project. These have a permissive license CC-BY 4.0, meaning you can use them for any purpose you want, including commercial, and only a mention of the original project is required. The creation of these datasets was supported by Collabora
Monado is an open-source OpenXR runtime that you can use to make devices OpenXR compatible. It also provides drivers for different existing hardware thanks to different contributors in the community creating drivers for it. Monado provides different XR-related modules that these drivers can use. To be more specific, inside-out head tracking is one of those modules and, while you can use different tracking systems, the main system is a fork of Basalt. Creating a good open-source tracking solution requires a solid measurement pipeline to understand how changes in the system affect tracking quality. For this reason, the creation of these datasets was essential.
These datasets are very specific to the XR use case as they contain VI-SLAM footage recorded from devices such as VR headsets, but other devices like phones or AR glasses might be added in the future. These were made since current SLAM datasets like EuRoC or TUM-VI were not specific enough for XR, or they didn't have permissively enough usage licenses.
For questions or comments, you can use the Hugging Face
Community,
join Monado's discord server and ask in the
#slam
channel, or send an email to mateo.demayo@collabora.com.
List of sequences
- MI_valve_index
- MIC_calibration
- MIC01_camcalib1:
Preview 5x
- MIC02_camcalib2:
Preview 5x
- MIC03_camcalib3:
Preview 5x
- MIC04_imucalib1:
Preview 5x
- MIC05_imucalib2:
Preview 5x
- MIC06_imucalib3:
Preview 5x
- MIC07_camcalib4:
Preview 5x
- MIC08_camcalib5:
Preview 5x
- MIC09_imucalib4:
Preview 5x
- MIC10_imucalib5:
Preview 5x
- MIC11_camcalib6:
Preview 5x
- MIC12_imucalib6:
Preview 5x
- MIC13_camcalib7:
Preview 5x
- MIC14_camcalib8:
Preview 5x
- MIC15_imucalib7:
Preview 5x
- MIC16_imucalib8:
Preview 5x
- MIC01_camcalib1:
- MIO_others
- MIO01_hand_puncher_1:
Preview 5x
- MIO02_hand_puncher_2:
Preview 5x
- MIO03_hand_shooter_easy:
Preview 5x
- MIO04_hand_shooter_hard:
Preview 5x
- MIO05_inspect_easy:
Preview 5x
- MIO06_inspect_hard:
Preview 5x
- MIO07_mapping_easy:
Preview 5x
- MIO08_mapping_hard:
Preview 5x
- MIO09_short_1_updown:
Preview 5x
- MIO10_short_2_panorama:
Preview 5x
- MIO11_short_3_backandforth:
Preview 5x
- MIO12_moving_screens:
Preview 5x
- MIO13_moving_person:
Preview 5x
- MIO14_moving_props:
Preview 5x
- MIO15_moving_person_props:
Preview 5x
- MIO16_moving_screens_person_props:
Preview 5x
- MIO01_hand_puncher_1:
- MIP_playing
- MIPB_beat_saber
- MIPB01_beatsaber_100bills_360_normal:
Preview 5x
- MIPB02_beatsaber_crabrave_360_hard:
Preview 5x
- MIPB03_beatsaber_countryrounds_360_expert:
Preview 5x
- MIPB04_beatsaber_fitbeat_hard:
Preview 5x
- MIPB05_beatsaber_fitbeat_360_expert:
Preview 5x
- MIPB06_beatsaber_fitbeat_expertplus_1:
Preview 5x
- MIPB07_beatsaber_fitbeat_expertplus_2:
Preview 5x
- MIPB08_beatsaber_long_session_1:
Preview 5x
- MIPB01_beatsaber_100bills_360_normal:
- MIPP_pistol_whip
- MIPP01_pistolwhip_blackmagic_hard:
Preview 5x
- MIPP02_pistolwhip_lilith_hard:
Preview 5x
- MIPP03_pistolwhip_requiem_hard:
Preview 5x
- MIPP04_pistolwhip_revelations_hard:
Preview 5x
- MIPP05_pistolwhip_thefall_hard_2pistols:
Preview 5x
- MIPP06_pistolwhip_thegrave_hard:
Preview 5x
- MIPP01_pistolwhip_blackmagic_hard:
- MIPT_thrill_of_the_fight
- MIPT01_thrillofthefight_setup:
Preview 5x
- MIPT02_thrillofthefight_fight_1:
Preview 5x
- MIPT03_thrillofthefight_fight_2:
Preview 5x
- MIPT01_thrillofthefight_setup:
- MIPB_beat_saber
- MIC_calibration
- MG_reverb_g2
- MGC_calibration
- MGC01_camcalib01_1:
Preview 5x
- MGC02_camcalib02_1:
Preview 5x
- MGC03_camcalib13_1:
Preview 5x
- MGC04_imucalib01_1:
Preview 5x
- MGC05_imucalib02_1:
Preview 5x
- MGC06_imucalib13_1:
Preview 5x
- MGC07_magcalib_1:
Preview 5x
- MGC08_camcalib01_2:
Preview 5x
- MGC09_camcalib02_2:
Preview 5x
- MGC10_camcalib13_2:
Preview 5x
- MGC11_imucalib01_2:
Preview 5x
- MGC12_imucalib02_2:
Preview 5x
- MGC13_imucalib13_2:
Preview 5x
- MGC14_magcalib_2:
Preview 5x
- MGC15_camcalib01_3:
Preview 5x
- MGC16_camcalib02_3:
Preview 5x
- MGC17_camcalib13_3:
Preview 5x
- MGC18_imucalib01_3:
Preview 5x
- MGC19_imucalib02_3:
Preview 5x
- MGC20_imucalib13_3:
Preview 5x
- MGC21_magcalib_3:
Preview 5x
- MGC22_camcalib01_4:
Preview 5x
- MGC23_camcalib02_4:
Preview 5x
- MGC24_camcalib13_4:
Preview 5x
- MGC25_imucalib01_4:
Preview 5x
- MGC26_imucalib02_4:
Preview 5x
- MGC27_imucalib13_4:
Preview 5x
- MGC28_magcalib_4:
Preview 5x
- MGC01_camcalib01_1:
- MGO_others
- MGO01_low_light:
Preview 5x
- MGO02_hand_puncher:
Preview 5x
- MGO03_hand_shooter_easy:
Preview 5x
- MGO04_hand_shooter_hard:
Preview 5x
- MGO05_inspect_easy:
Preview 5x
- MGO06_inspect_hard:
Preview 5x
- MGO07_mapping_easy:
Preview 5x
- MGO08_mapping_hard:
Preview 5x
- MGO09_short_1_updown:
Preview 5x
- MGO10_short_2_panorama:
Preview 5x
- MGO11_short_3_backandforth:
Preview 5x
- MGO12_freemovement_long_session:
Preview 5x
- MGO13_sudden_movements:
Preview 5x
- MGO14_flickering_light:
Preview 5x
- MGO15_seated_screen:
Preview 5x
- MGO01_low_light:
- MGC_calibration
- MOC_calibration
- MOC01_camcalib_1:
Preview 5x
- MOC02_imucalib_1:
Preview 5x
- MOC03_magcalib_1:
Preview 5x
- MOC04_camcalib_2:
Preview 5x
- MOC05_imucalib_2:
Preview 5x
- MOC06_magcalib_2:
Preview 5x
- MOC07_camcalib_3:
Preview 5x
- MOC08_imucalib_3:
Preview 5x
- MOC09_magcalib_3:
Preview 5x
- MOC10_camcalib_4:
Preview 5x
- MOC11_imucalib_4:
Preview 5x
- MOC12_magcalib_4:
Preview 5x
- MOC13_imustatic:
Preview 5x
- MOC01_camcalib_1:
- MOO_others
- MOO01_hand_puncher_1:
Preview 5x
- MOO02_hand_puncher_2:
Preview 5x
- MOO03_hand_shooter_easy:
Preview 5x
- MOO04_hand_shooter_hard:
Preview 5x
- MOO05_inspect_easy:
Preview 5x
- MOO06_inspect_hard:
Preview 5x
- MOO07_mapping_easy:
Preview 5x
- MOO08_mapping_hard:
Preview 5x
- MOO09_short_1_updown:
Preview 5x
- MOO10_short_2_panorama:
Preview 5x
- MOO11_short_3_backandforth:
Preview 5x
- MOO12_freemovement_long_session:
Preview 5x
- MOO13_sudden_movements:
Preview 5x
- MOO14_flickering_light:
Preview 5x
- MOO15_seated_screen:
Preview 5x
- MOO16_still:
Preview 5x
- MOO01_hand_puncher_1:
Valve Index datasets
These datasets were recorded using a Valve Index with the vive
driver in
Monado and they have ground truth from 3 lighthouses tracking the headset through
the proprietary OpenVR implementation provided by SteamVR. The exact commit used
in Monado at the time of recording is
a4e7765d.
The datasets are in the ASL dataset format, the same as the EuRoC
datasets.
Besides the main EuRoC format files, we provide some extra files with raw
timestamp data for exploring real time timestamp alignment techniques.
The dataset is post-processed to reduce as much as possible special treatment from SLAM systems: camera-IMU and ground truth-IMU timestamp alignment, IMU alignment and bias calibration have been applied, lighthouse tracked pose has been converted to IMU pose, and so on. Most of the post-processing was done with Basalt calibration and alignment tools, as well as the xrtslam-metrics scripts for Monado tracking. The post-processing process is documented in this video which goes through making the MIPB08 dataset ready for use starting from its raw version.
Data
Camera samples
In the vive
driver from Monado, we don't have direct access to the camera
device timestamps but only to V4L2 timestamps. These are not exactly hardware
timestamps and have some offset with respect to the device clock in which the
IMU samples are timestamped.
The camera frames can be found in the camX/data
directory as PNG files with
names corresponding to their V4L2 timestamps. The camX/data.csv
file contains
aligned timestamps of each frame. The camX/data.extra.csv
also contains the
original V4L2 timestamp and the "host timestamp" which is the time at which the
host computer had the frame ready to use after USB transmission. By separating
arrival time and exposure time algorithms can be made to be more robust for
real time operation.
The cameras of the Valve Index have global shutters with a resolution of 960×960 streaming at 54fps. They have auto exposure enabled. While the cameras of the Index are RGB you will find only grayscale images in these datasets. The original images are provided in YUYV422 format but only the luma component is stored.
For each dataset, the camera timestamps are aligned with respect to IMU
timestamps by running visual-only odometry with Basalt on a 30-second subset of
the dataset. The resulting trajectory is then aligned with the
basalt_time_alignment
tool that aligns the rotational velocities of the trajectory with the gyroscope
samples and returns the resulting offset in nanoseconds. That correction is then
applied to the dataset. Refer to the post-processing walkthrough
video for more details.
IMU samples
The IMU timestamps are device timestamps, they come at about 1000Hz. We provide
an imu0/data.raw.csv
file that contains the raw measurements without any axis
scale misalignment o bias correction. imu0/data.csv
has the
scale misalignment and bias corrections applied so that the SLAM system can
ignore those corrections. imu0/data.extra.csv
contains the arrival time of the
IMU sample to the host computer for algorithms that want to adapt themselves to
work in real time.
Ground truth information
The ground truth setup consists of three lighthouses 2.0 base stations and a SteamVR session providing tracking data through the OpenVR API to Monado. While not as precise as other MoCap tracking systems like OptiTrack or Vicon it should still provide pretty good accuracy and precision close to the 1mm range. There are different attempts at studying the accuracy of SteamVR tracking that you can check out like this, this, or this. When a tracking system gets closer to millimeter accuracy these datasets will no longer be as useful for improving it.
The raw ground truth data is stored in gt/data.raw.csv
. OpenVR does not provide
timestamps and as such, the timestamps recorded are from when the host asks
OpenVR for the latest pose with a call to
GetDeviceToAbsoluteTrackingPose
.
The poses contained in this file are not of the IMU but of the headset origin as
interpreted by SteamVR, which usually is between the middle of the eyes and
facing towards the displays. The file gt/data.csv
corrects each entry of the
previous file with timestamps aligned with the IMU clock and poses of the IMU
instead of this headset origin.
Calibration
There are multiple calibration datasets in the
MIC_calibration
directory. There are camera-focused and IMU-focused calibration datasets. See
the
README.md
file in there for more information on what each sequence is.
In the
MI_valve_index/extras
directory you can find the following files:
calibration.json
: Calibration file produced with thebasalt_calibrate_imu
tool fromMIC01_camcalib1
andMIC04_imucalib1
datasets with camera-IMU time offset and IMU bias/misalignment info removed so that it works with the fully the all the datasets by default which are fully post-processed and don't require those fields.calibration.extra.json
: Same ascalibration.json
but with the cam-IMU time offset and IMU bias and misalignment information filled in.factory.json
: JSON file exposed by the headset's firmware with information of the device. It includes camera and display calibration as well as more data that might be of interest. It is not used but included for completeness' sake.other_calibrations/
: Calibration results obtained from the other calibration datasets. Shown for comparison and ensuring that all of them have similar values.MICXX_camcalibY
has camera-only calibration produced with thebasalt_calibrate
tool, while the correspondingMICXX_imucalibY
datasets use these datasets as a starting point and have thebasalt_calibrate_imu
calibration results.
Camera model
By default, the calibration.json
file provides parameters k1
, k2
, k3
,
and k4
for the Kannala-Brandt camera
model
with fish-eye distortion (also known as OpenCV's
fish-eye).
Calibrations with other camera models might be added later on, otherwise, you can use the calibration sequences for custom calibrations.
IMU model
For the default calibration.json
where all parameters are zero, you can ignore
any model and just use the measurements present in imu0/data.csv
directly. If
instead, you want to use the raw measurements from imu0/data.raw.csv
you will
need to apply the Basalt
accelerometer
and
gyroscope
models that use a misalignment-scale correction matrix together with a constant
initial bias. The random walk and white noise parameters were not computed and
default reasonable values are used instead.
Post-processing walkthrough
If you are interested in understanding the step-by-step procedure of post-processing of the dataset, below is a video detailing the procedure for the MIPB08 dataset.
Sequences
- MIC_calibration: Calibration sequences that record this calibration target from Kalibr with the squares of the target having sides of 3 cm. Some sequences are focused on camera calibration covering the image planes of both stereo cameras while others on IMU calibration properly exciting all six components of the IMU.
- MIP_playing:
Datasets in which the user is playing a particular VR game on SteamVR while
Monado records the datasets.
- MIPB_beat_saber: This contains different songs played at different speeds. The fitbeat song is one that requires a lot of head movement while MIPB08 is a long 40min dataset with many levels played.
- MIPP_pistol_whip: This is a shooting and music game, each dataset is a different level/song.
- MIPT_thrill_of_the_fight: This is a boxing game.
- MIO_others: These are other datasets that might be useful, they include play-pretend scenarios in which the user is supposed to be playing some particular game, then there is some inspection and scanning/mapping of the room, some very short and lightweight datasets for quick testing, and some datasets with a lot of movement around the environment.
Evaluation
These are the results of running the current Monado tracker that is based on Basalt on the dataset sequences.
Seq. | Avg. time* | Avg. feature count | ATE (m) | RTE 100ms (m) ** | SDM 0.01m (m/m) *** |
---|---|---|---|---|---|
MIO01 | 10.04 ± 1.43 | [36 23] ± [28 18] | 0.605 ± 0.342 | 0.035671 ± 0.033611 | 0.4246 ± 0.5161 |
MIO02 | 10.41 ± 1.48 | [32 18] ± [25 16] | 1.182 ± 0.623 | 0.063340 ± 0.059176 | 0.4681 ± 0.4329 |
MIO03 | 10.24 ± 1.37 | [47 26] ± [26 16] | 0.087 ± 0.033 | 0.006293 ± 0.004259 | 0.2113 ± 0.2649 |
MIO04 | 9.47 ± 1.08 | [27 16] ± [25 16] | 0.210 ± 0.100 | 0.013121 ± 0.010350 | 0.3086 ± 0.3715 |
MIO05 | 9.95 ± 1.01 | [66 34] ± [33 21] | 0.040 ± 0.016 | 0.003188 ± 0.002192 | 0.1079 ± 0.1521 |
MIO06 | 9.65 ± 1.06 | [44 28] ± [33 22] | 0.049 ± 0.019 | 0.010454 ± 0.008578 | 0.2620 ± 0.3684 |
MIO07 | 9.63 ± 1.16 | [46 26] ± [30 19] | 0.019 ± 0.008 | 0.002442 ± 0.001355 | 0.0738 ± 0.0603 |
MIO08 | 9.74 ± 0.87 | [29 22] ± [18 16] | 0.059 ± 0.021 | 0.007167 ± 0.004657 | 0.1644 ± 0.3433 |
MIO09 | 9.94 ± 0.72 | [44 29] ± [14 8] | 0.006 ± 0.003 | 0.002940 ± 0.002024 | 0.0330 ± 0.0069 |
MIO10 | 9.48 ± 0.82 | [35 21] ± [18 10] | 0.016 ± 0.009 | 0.004623 ± 0.003310 | 0.0620 ± 0.0340 |
MIO11 | 9.34 ± 0.79 | [32 20] ± [19 10] | 0.024 ± 0.010 | 0.007255 ± 0.004821 | 0.0854 ± 0.0540 |
MIO12 | 11.05 ± 2.20 | [43 23] ± [31 19] | 0.420 ± 0.160 | 0.005298 ± 0.003603 | 0.1546 ± 0.2641 |
MIO13 | 10.47 ± 1.89 | [35 21] ± [24 18] | 0.665 ± 0.290 | 0.026294 ± 0.022790 | 1.0180 ± 1.0126 |
MIO14 | 9.27 ± 1.03 | [49 31] ± [30 21] | 0.072 ± 0.028 | 0.002779 ± 0.002487 | 0.1657 ± 0.2409 |
MIO15 | 9.75 ± 1.16 | [52 26] ± [29 16] | 0.788 ± 0.399 | 0.011558 ± 0.010541 | 0.6906 ± 0.6876 |
MIO16 | 9.72 ± 1.26 | [33 17] ± [25 15] | 0.517 ± 0.135 | 0.013268 ± 0.011355 | 0.4397 ± 0.7167 |
MIPB01 | 10.28 ± 1.25 | [63 46] ± [34 24] | 0.282 ± 0.109 | 0.006797 ± 0.004551 | 0.1401 ± 0.1229 |
MIPB02 | 9.88 ± 1.08 | [55 37] ± [30 20] | 0.247 ± 0.097 | 0.005065 ± 0.003514 | 0.1358 ± 0.1389 |
MIPB03 | 10.21 ± 1.12 | [66 44] ± [32 23] | 0.186 ± 0.103 | 0.005938 ± 0.004261 | 0.1978 ± 0.3590 |
MIPB04 | 9.58 ± 1.02 | [51 37] ± [24 17] | 0.105 ± 0.060 | 0.004822 ± 0.003428 | 0.0652 ± 0.0555 |
MIPB05 | 9.97 ± 0.97 | [73 48] ± [32 23] | 0.039 ± 0.017 | 0.004426 ± 0.002828 | 0.0826 ± 0.1313 |
MIPB06 | 9.95 ± 0.85 | [58 35] ± [32 21] | 0.050 ± 0.022 | 0.004164 ± 0.002638 | 0.0549 ± 0.0720 |
MIPB07 | 10.07 ± 1.00 | [73 47] ± [31 20] | 0.064 ± 0.038 | 0.004984 ± 0.003170 | 0.0785 ± 0.1411 |
MIPB08 | 9.97 ± 1.08 | [71 47] ± [36 24] | 0.636 ± 0.272 | 0.004066 ± 0.002556 | 0.0740 ± 0.0897 |
MIPP01 | 10.03 ± 1.21 | [36 22] ± [21 15] | 0.559 ± 0.241 | 0.009227 ± 0.007765 | 0.3472 ± 0.9075 |
MIPP02 | 10.19 ± 1.20 | [42 22] ± [22 15] | 0.257 ± 0.083 | 0.011046 ± 0.010201 | 0.5014 ± 0.7665 |
MIPP03 | 10.13 ± 1.24 | [37 20] ± [23 15] | 0.260 ± 0.101 | 0.008636 ± 0.007166 | 0.3205 ± 0.5786 |
MIPP04 | 9.74 ± 1.09 | [38 23] ± [22 16] | 0.256 ± 0.144 | 0.007847 ± 0.006743 | 0.2586 ± 0.4557 |
MIPP05 | 9.71 ± 0.84 | [37 24] ± [21 15] | 0.193 ± 0.086 | 0.005606 ± 0.004400 | 0.1670 ± 0.2398 |
MIPP06 | 9.92 ± 3.11 | [37 21] ± [21 14] | 0.294 ± 0.136 | 0.009794 ± 0.008873 | 0.4016 ± 0.5648 |
MIPT01 | 10.78 ± 2.06 | [68 44] ± [33 23] | 0.108 ± 0.060 | 0.003995 ± 0.002716 | 0.7109 ± 13.3461 |
MIPT02 | 10.85 ± 1.27 | [79 54] ± [39 28] | 0.198 ± 0.109 | 0.003709 ± 0.002348 | 0.0839 ± 0.1175 |
MIPT03 | 10.80 ± 1.55 | [76 52] ± [42 30] | 0.401 ± 0.206 | 0.005623 ± 0.003694 | 0.1363 ± 0.1789 |
AVG | 11.33 ± 1.83 | [49 23] ± [37 15] | 0.192 ± 0.090 | 0.009439 ± 0.007998 | 0.3247 ± 0.6130 |
Seq. | Avg. time* | Avg. feature count | ATE (m) | RTE 100ms (m) ** | SDM 0.01m (m/m) *** |
---|---|---|---|---|---|
MGO01 | 12.06 ± 2.10 | [19 16] ± [13 12] | 0.680 ± 0.249 | 0.022959 ± 0.019026 | 0.3604 ± 1.3031 |
MGO02 | 11.20 ± 1.83 | [19 15] ± [19 16] | 0.556 ± 0.241 | 0.027931 ± 0.019074 | 0.3218 ± 0.4599 |
MGO03 | 9.88 ± 1.92 | [22 16] ± [16 16] | 0.145 ± 0.041 | 0.013003 ± 0.008555 | 0.2433 ± 0.3512 |
MGO04 | 9.43 ± 1.45 | [16 14] ± [16 16] | 0.261 ± 0.113 | 0.024674 ± 0.017380 | 0.3609 ± 0.4829 |
MGO05 | 9.93 ± 1.71 | [39 40] ± [17 26] | 0.030 ± 0.011 | 0.004212 ± 0.002632 | 0.0621 ± 0.1044 |
MGO06 | 10.40 ± 1.84 | [24 22] ± [18 18] | 0.111 ± 0.038 | 0.018013 ± 0.011398 | 0.2496 ± 0.2802 |
MGO07 | 9.74 ± 1.54 | [30 24] ± [13 12] | 0.021 ± 0.010 | 0.005628 ± 0.003707 | 0.0992 ± 0.1538 |
MGO08 | 9.42 ± 1.43 | [17 13] ± [11 8] | 0.027 ± 0.015 | 0.013162 ± 0.009729 | 0.1667 ± 0.4068 |
MGO09 | 10.90 ± 1.70 | [39 34] ± [11 9] | 0.008 ± 0.004 | 0.006278 ± 0.004054 | 0.0738 ± 0.0492 |
MGO10 | 9.31 ± 1.36 | [29 37] ± [14 17] | 0.008 ± 0.003 | 0.003496 ± 0.002333 | 0.0439 ± 0.0311 |
MGO11 | 9.26 ± 1.08 | [30 22] ± [13 17] | 0.017 ± 0.006 | 0.006065 ± 0.004285 | 0.0687 ± 0.0604 |
MGO12 | 9.33 ± 1.39 | [20 19] ± [17 19] | 0.610 ± 0.270 | 0.017372 ± 0.016246 | 0.7225 ± 10.7366 |
MGO13 | 10.08 ± 1.98 | [18 17] ± [16 17] | 0.683 ± 0.211 | 0.025764 ± 0.017900 | 0.2542 ± 0.3324 |
MGO14 | 10.00 ± 1.83 | [29 25] ± [17 21] | 0.070 ± 0.025 | 0.012013 ± 0.007674 | 0.1417 ± 0.1850 |
MGO15 | 9.07 ± 1.39 | [9 7] ± [10 7] | 0.037 ± 0.016 | 0.003737 ± 0.003425 | 0.7053 ± 4.3405 |
AVG | 10.00 ± 1.64 | [24 21] ± [15 15] | 0.218 ± 0.084 | 0.013620 ± 0.009828 | 0.2583 ± 1.2852 |
Seq. | Avg. time* | Avg. feature count | ATE (m) | RTE 100ms (m) ** | SDM 0.01m (m/m) *** |
---|---|---|---|---|---|
MOO01 | 7.58 ± 1.55 | [30 23] ± [21 20] | 0.281 ± 0.131 | 0.016662 ± 0.010451 | 0.2358 ± 0.3848 |
MOO02 | 6.89 ± 1.65 | [27 21] ± [24 25] | 0.237 ± 0.101 | 0.015469 ± 0.009201 | 0.1710 ± 0.2281 |
MOO03 | 7.33 ± 1.77 | [30 26] ± [21 24] | 0.177 ± 0.088 | 0.013521 ± 0.009276 | 0.2610 ± 0.6376 |
MOO04 | 6.11 ± 1.35 | [22 14] ± [20 16] | 0.065 ± 0.026 | 0.009849 ± 0.005401 | 0.0889 ± 0.1166 |
MOO05 | 7.04 ± 1.54 | [53 46] ± [20 30] | 0.018 ± 0.007 | 0.003070 ± 0.001838 | 0.0284 ± 0.0181 |
MOO06 | 6.66 ± 1.58 | [38 35] ± [21 27] | 0.056 ± 0.028 | 0.008395 ± 0.005154 | 0.0847 ± 0.1033 |
MOO07 | 6.38 ± 1.71 | [43 31] ± [16 21] | 0.013 ± 0.006 | 0.003422 ± 0.002073 | 0.0317 ± 0.0326 |
MOO08 | 7.17 ± 1.65 | [25 19] ± [19 15] | 0.028 ± 0.015 | 0.011164 ± 0.006958 | 0.0939 ± 0.1051 |
MOO09 | 8.31 ± 1.84 | [43 38] ± [19 17] | 0.004 ± 0.002 | 0.003284 ± 0.002181 | 0.0063 ± 0.0000 |
MOO10 | 6.94 ± 1.43 | [38 21] ± [18 15] | 0.010 ± 0.005 | 0.003765 ± 0.002338 | 0.0440 ± 0.0232 |
MOO11 | 6.66 ± 1.57 | [32 32] ± [18 22] | 0.019 ± 0.010 | 0.005102 ± 0.003253 | 0.0433 ± 0.0356 |
MOO12 | 5.78 ± 1.40 | [32 34] ± [21 26] | 0.694 ± 0.329 | 0.008292 ± 0.007220 | 0.1275 ± 0.2512 |
MOO13 | 6.12 ± 1.60 | [21 16] ± [22 19] | 0.501 ± 0.188 | 0.017042 ± 0.010342 | 0.1448 ± 0.1551 |
MOO14 | 7.07 ± 1.32 | [26 19] ± [17 16] | 0.113 ± 0.058 | 0.007743 ± 0.004316 | 0.1130 ± 0.1661 |
MOO15 | 6.51 ± 1.70 | [20 11] ± [15 6] | 0.629 ± 0.312 | 0.015308 ± 0.014007 | 0.7254 ± 0.3257 |
MOO16 | 5.21 ± 1.08 | [23 28] ± [6 8] | 0.046 ± 0.022 | 0.001441 ± 0.001238 | 0.1750 ± 0.1788 |
AVG | 6.74 ± 1.55 | [31 26] ± [19 19] | 0.181 ± 0.083 | 0.008971 ± 0.005953 | 0.1484 ± 0.1726 |
- *: Average frame time. On an AMD Ryzen 7 5800X CPU. Run with pipeline fully saturated. Real time operation frame times should be slightly lower.
- **: RTE using delta of 6 frames (11ms)
- ***: The SDM metric is similar to RTE, it represents distance in meters drifted for each meter of the dataset. The metric is implemented in the xrtslam-metrics project.
License
This work is licensed under a Creative Commons Attribution 4.0 International License.
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