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The dataset generation failed
Error code:   DatasetGenerationError
Exception:    TypeError
Message:      int() argument must be a string, a bytes-like object or a real number, not 'NoneType'
Traceback:    Traceback (most recent call last):
                File "/usr/local/lib/python3.14/site-packages/datasets/builder.py", line 1520, in _prepare_split_single
                  for key, record in generator:
                                     ^^^^^^^^^
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 613, in wrapped
                  for item in generator(*args, **kwargs):
                              ~~~~~~~~~^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/site-packages/datasets/packaged_modules/webdataset/webdataset.py", line 130, in _generate_examples
                  for example_idx, example in enumerate(self._get_pipeline_from_tar(tar_path, tar_iterator)):
                                              ~~~~~~~~~^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/site-packages/datasets/packaged_modules/webdataset/webdataset.py", line 34, in _get_pipeline_from_tar
                  for filename, f in tar_iterator:
                                     ^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/site-packages/datasets/utils/track.py", line 49, in __iter__
                  for x in self.generator(*self.args):
                           ~~~~~~~~~~~~~~^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/site-packages/datasets/utils/file_utils.py", line 1405, in _iter_from_urlpath
                  with xopen(urlpath, "rb", download_config=download_config, block_size=0) as f:
                       ~~~~~^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/site-packages/datasets/utils/file_utils.py", line 982, in xopen
                  file_obj = fs.open(paths[0], mode)
                File "<string>", line 3, in open
                File "/usr/local/lib/python3.14/unittest/mock.py", line 1176, in __call__
                  return self._mock_call(*args, **kwargs)
                         ~~~~~~~~~~~~~~~^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/unittest/mock.py", line 1180, in _mock_call
                  return self._execute_mock_call(*args, **kwargs)
                         ~~~~~~~~~~~~~~~~~~~~~~~^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/unittest/mock.py", line 1247, in _execute_mock_call
                  result = effect(*args, **kwargs)
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 786, in wrapped
                  tracker.files[urlpath] = {"read": 0, "size": int(f.size)}
                                                               ~~~^^^^^^^^
              TypeError: int() argument must be a string, a bytes-like object or a real number, not 'NoneType'
              
              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/parquet_and_info.py", line 1369, in compute_config_parquet_and_info_response
                  parquet_operations, partial, estimated_dataset_info = stream_convert_to_parquet(
                                                                        ~~~~~~~~~~~~~~~~~~~~~~~~~^
                      builder, max_dataset_size_bytes=max_dataset_size_bytes
                      ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                  )
                  ^
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 948, in stream_convert_to_parquet
                  builder._prepare_split(split_generator=splits_generators[split], file_format="parquet")
                  ~~~~~~~~~~~~~~~~~~~~~~^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/site-packages/datasets/builder.py", line 1382, in _prepare_split
                  for job_id, done, content in self._prepare_split_single(
                                               ~~~~~~~~~~~~~~~~~~~~~~~~~~^
                      gen_kwargs=gen_kwargs, job_id=job_id, **_prepare_split_args
                      ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                  ):
                  ^
                File "/usr/local/lib/python3.14/site-packages/datasets/builder.py", line 1560, in _prepare_split_single
                  raise DatasetGenerationError("An error occurred while generating the dataset") from e
              datasets.exceptions.DatasetGenerationError: An error occurred while generating the dataset

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hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E-174_N64_00042
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E-168_N70_00065
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E-168_N70_00066
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E-174_N64_00046
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E-174_N64_00047
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E012_N10_00000
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E-088_N-50_00001
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E-168_N70_00067
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E-174_N64_00048
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E012_N10_00001
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
AHi/Murray-Lab_CTX-Mosaic_beta01_E-168_N70_00068
hf://datasets/Mirali33/MOMO-pretraining-data@8695892d358ab791bc815cdc6fe7396ff8c2ecfd/CTX/AHi.tar
End of preview.

MOMO Pre-training Dataset

This dataset contains the pre-training data used to train MOMO (Mars Orbital Model), the first multi-sensor foundation model for Mars remote sensing, presented at CVPR 2026.

πŸ“„ Paper: MOMO: Mars Orbital Model Foundation Model for Mars Orbital Applications

πŸ’» Code: github.com/kerner-lab/MOMO

πŸ€— Model Checkpoints: huggingface.co/Mirali33/MOMO

πŸ† Mars-Bench (Downstream tasks): mars-bench.github.io

MOMO Pre-training Samples
MOMO trains separate models on HiRISE, CTX, and THEMIS data and merges them into a single foundation model capable of diverse Mars orbital tasks.

Dataset Overview

The dataset consists of grayscale image crops (.tif, non-georeferenced) collected from three Mars orbital instruments, organized by their corresponding USGS Geologic Map of Mars (GMoM) unit. The data spans a wide range of Martian surface types, resolutions, and acquisition conditions.

Instrument Resolution Coverage # Samples
HiRISE 0.25, 0.5, 0.696, 1 m/pixel ~4.5% of Mars surface ~16M (4M used)
CTX 5 m/pixel >99.5% of Mars surface ~10M (4M used)
THEMIS 100 m/pixel Global ~4M

Data Collection

  • HiRISE: Grayscale crops from the RED band of map-projected Reduced Data Record (RDR) products, acquired from November 2006 through May 2025 (Primary and Extended Science Phases). Source: HiRISE PDS RDR Archive
  • CTX: Crops from the Murray Lab open-source CTX global mosaic (updated March 2023), rendered at 5.0 m/pixel. Source: Murray Lab CTX Mosaic
  • THEMIS: Crops from Projected Brightness Temperature (PBT) products (ODTGEO_v2) from the THEMIS archive, collected from October 2002 to April 2025. Source: THEMIS PBT Archive

For details on data curation, geographic distribution, quality filtering, and stratified sampling strategy, please refer to Section 4 and Appendix A.1 of the paper.

MOMO Pre-training Samples
Illustrative samples from the three Mars orbital instruments β€” HiRISE, CTX, and THEMIS.

Repository Structure

MOMO-pretraining-data/
β”œβ”€β”€ HiRISE/
β”‚   β”œβ”€β”€ Aa.tar
β”‚   β”œβ”€β”€ AHi.tar
β”‚   └── ... (one .tar per GMoM unit)
β”œβ”€β”€ CTX/
β”‚   β”œβ”€β”€ Aa.tar
β”‚   └── ...
β”œβ”€β”€ THEMIS/
β”‚   β”œβ”€β”€ Aa.tar
β”‚   └── ...
└── metadata/
    β”œβ”€β”€ HiRISE_metadata.csv
    β”œβ”€β”€ CTX_metadata.csv
    └── THEMIS_metadata.csv

Each .tar file corresponds to one GMoM (Geologic Map of Mars) unit and contains .tif image crops for that unit. The metadata/ folder contains per-image statistics and acquisition information for all samples across all three instruments.


Metadata

Each instrument has an associated metadata CSV with per-image statistics and acquisition information. The columns are described below.

Column Descriptions

Spatial & Identification

Column HiRISE CTX THEMIS Description
Filename βœ… βœ… βœ… Unique filename for each image crop
Center Latitude βœ… βœ… βœ… Latitude of the image center in decimal degrees
Center Longitude βœ… βœ… βœ… Longitude of the image center in decimal degrees
Top Left Latitude βœ… βœ… βœ… Latitude of the top-left corner of the image crop
Top Left Longitude βœ… βœ… βœ… Longitude of the top-left corner of the image crop
Top Right Latitude βœ… βœ… βœ… Latitude of the top-right corner of the image crop
Top Right Longitude βœ… βœ… βœ… Longitude of the top-right corner of the image crop
Bottom Left Latitude βœ… βœ… βœ… Latitude of the bottom-left corner of the image crop
Bottom Left Longitude βœ… βœ… βœ… Longitude of the bottom-left corner of the image crop
Bottom Right Latitude βœ… βœ… βœ… Latitude of the bottom-right corner of the image crop
Bottom Right Longitude βœ… βœ… βœ… Longitude of the bottom-right corner of the image crop
GMoM_Unit_acronym βœ… βœ… βœ… Acronym of the USGS Geologic Map of Mars unit the crop falls within (e.g., lHl, mNh)
which_instrument βœ… βœ… βœ… Source instrument: HiRISE, CTX, or THEMIS

Basic Image Statistics

Column HiRISE CTX THEMIS Description
mean βœ… βœ… βœ… Per-image mean pixel intensity over the normalized image (values in [0, 1])
std βœ… βœ… βœ… Per-image standard deviation of pixel intensities over the normalized image
black_percentage βœ… βœ… βœ… Fraction of pixels with zero intensity; used to detect no-data or border regions

Image Quality Metrics

All quality metrics below are computed on the grayscale, min-max normalized version of each image (scaled to [0, 255] then normalized to [0, 1] for metric computation).

Column HiRISE CTX THEMIS Description
SSIM βœ… βœ… βœ… Structural Similarity Index between the original image and a Gaussian-blurred version (kernel 5Γ—5, Οƒ=1.5). Measures how much structural content is preserved relative to a smoothed reference. Lower values indicate noisy or artifact-heavy images.
PSNR βœ… βœ… βœ… Peak Signal-to-Noise Ratio between the original and Gaussian-blurred image (in dB). Higher values indicate cleaner images.
SNR βœ… βœ… βœ… Signal-to-Noise Ratio, computed as the ratio of mean pixel intensity to standard deviation. Measures the relative strength of the signal versus background variation.
Noise Estimate βœ… βœ… βœ… Noise level estimated by applying a Laplacian-like high-pass filter and computing Οƒ = (sum of absolute filtered values) Γ— √(0.5Ο€) / (6 Γ— (Wβˆ’2) Γ— (Hβˆ’2)). Lower values indicate a cleaner image.
Blur βœ… βœ… βœ… Variance of the Laplacian of the image. Higher values indicate sharper images; lower values indicate blurry images.
Edge Density βœ… βœ… βœ… Fraction of pixels detected as edges by the Canny edge detector (thresholds 100 and 200). Higher values indicate images with richer spatial structure.
Contrast βœ… βœ… βœ… Standard deviation of normalized pixel intensities. Higher values indicate greater tonal variation within the image.
High Frequency Ratio βœ… βœ… βœ… Fraction of FFT magnitude energy outside a central low-frequency disk (radius = min(H,W)/8). Higher values indicate greater high-frequency content, which can signal noise or fine texture detail.
FFT Ratio βœ… βœ… βœ… Ratio of horizontal to vertical frequency band energy in the FFT magnitude spectrum (Β±5 pixel bands through the center). Values significantly above 1.0 indicate horizontal striping or stretching artifacts.
Gradient Ratio βœ… βœ… βœ… Ratio of the variance of horizontal Sobel gradients to vertical Sobel gradients. Values significantly above 1.0 suggest dominant horizontal structure, which may indicate scan-line artifacts.
Flagged βœ… βœ… βœ… Binary flag (1/0) indicating whether the image was detected as a known satellite processing artifact β€” specifically, images with float32 dtype and a median pixel value of exactly 91.43115.

Acquisition Metadata

Column HiRISE CTX THEMIS Description
GSD βœ… βœ… βœ… Ground Sampling Distance in meters per pixel, derived from MAP_SCALE in the PDS label
Acquisition Date βœ… ❌ βœ… UTC datetime of the observation start, derived from START_TIME in the PDS label
Start Time βœ… ❌ βœ… UTC datetime of the observation stop, derived from STOP_TIME in the PDS label
Incidence Angle βœ… ❌ ❌ Angle between the incoming solar ray and the surface normal at acquisition time (degrees), from VIEWING_PARAMETERS in the HiRISE PDS label
Emission Angle βœ… ❌ ❌ Angle between the surface normal and the direction toward the sensor at acquisition time (degrees), from VIEWING_PARAMETERS in the HiRISE PDS label
Phase Angle βœ… ❌ ❌ Angle between the incoming solar ray and the direction toward the sensor (degrees); affects image brightness and shadowing. From VIEWING_PARAMETERS in the HiRISE PDS label
Local Time βœ… ❌ ❌ Local solar time at the image center at acquisition (in units of local day / 24), from VIEWING_PARAMETERS in the HiRISE PDS label
Solar Longitude βœ… ❌ ❌ Solar longitude (Ls) in degrees, representing the Martian season at acquisition (0Β° = northern spring equinox). From VIEWING_PARAMETERS in the HiRISE PDS label

THEMIS-specific

Column Description
Minimum Brightness Temperature Minimum projected brightness temperature (Kelvin) recorded in the image, from MINIMUM_BRIGHTNESS_TEMPERATURE in the PDS label
Maximum Brightness Temperature Maximum projected brightness temperature (Kelvin) recorded in the image, from MAXIMUM_BRIGHTNESS_TEMPERATURE in the PDS label
Band Number THEMIS IR spectral band number used for this image crop (e.g., band 9 = 12.57 Β΅m), from BAND_NUMBER in the PDS label

Note on CTX metadata: CTX data in this dataset is sourced from the Murray Lab global mosaic rather than individual PDS RDR products. As a result, per-image acquisition metadata (viewing angles, local time, solar longitude, acquisition date) is not available for CTX. Only image quality metrics, spatial coordinates, and GSD are provided.


Data Filtering

To filter out low-quality images, two primary metrics are recommended, as used in the MOMO paper:

MOMO Pre-training Samples
Examples of low-quality (top) and high-quality (bottom) samples from HiRISE, CTX, and THEMIS.
  • SSIM (Structural Similarity Index): measures structural content preservation relative to a Gaussian-smoothed version of the image.
  • Noise Estimate: measures the absolute noise level via a Laplacian-based high-pass filter.

Both metrics range from 0 to 1, where lower values indicate poorer image quality. In MOMO, samples with either metric below 0.4 were discarded, a threshold determined through human verification. This step effectively removes images with satellite artifacts, excessive noise, or blur.

You may also consider additional metadata columns for custom filtering β€” for example, black_percentage to remove crops with significant no-data regions, FFT Ratio and Gradient Ratio to filter horizontal scan-line artifacts, Flagged to remove known processing artifacts, or acquisition metadata such as Incidence Angle to restrict to specific illumination conditions.


Citation

If you use this dataset, please cite:

@InProceedings{Purohit_2026_CVPR,
    author    = {Purohit, Mirali and Gajera, Bimal and Mehta, Irish and Tokas, Bhanu and Adler, Jacob and Lu, Steven and Dickenshied, Scott and Diniega, Serina and Bue, Brian and Rebbapragada, Umaa and Kerner, Hannah},
    title     = {MOMO: Mars Orbital MOdel Foundation Model for Mars Orbital Applications},
    booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
    month     = {June},
    year      = {2026},
    pages     = {27772-27782}
}
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