| --- |
| license: cc-by-4.0 |
| tags: |
| - pytorch |
| - computer-vision |
| - remote-sensing |
| - mars |
| - dem-prediction |
| - u-net |
| - multi-task-learning |
| datasets: |
| - ESA-Datalabs/MCTED |
| --- |
| |
| # MarsDEMNet |
|
|
| MarsDEMNet is a comparative deep learning study for single-image Digital Elevation Model (DEM) prediction from Mars CTX satellite imagery. Four architectures are evaluated, a classical Random Forest baseline, a single-output U-Net, a multi-output U-Net with multi-task learning, and an encoder depth ablation — all trained on the MCTED dataset of 80,898 paired CTX orthoimage and DEM patches. |
|
|
| ## Model Details |
|
|
| ### Model Description |
|
|
| MarsDEMNet addresses a fundamental coverage asymmetry on Mars: while the CTX instrument has photographed ~99.5% of the Martian surface at 5–6 m/pixel, high-resolution stereo DEMs exist for only ~0.5–1% of that coverage. Models trained on MCTED learn to predict dense elevation maps from single optical images, extending effective DEM coverage to nearly the entire planet. |
|
|
| - **Model type:** Convolutional encoder-decoder (U-Net) |
| - **License:** CC-BY 4.0 |
| - **Finetuned from:** Trained from scratch — no pretrained weights |
|
|
| ### Model Sources |
|
|
| - **Repository:** https://github.com/harshithkethavath/MarsDEMNet |
| - **Dataset:** https://huggingface.co/datasets/ESA-Datalabs/MCTED |
|
|
| ## Checkpoints |
|
|
| Four model checkpoints are provided: |
|
|
| | File | Architecture | Val RMSE | Val MAE | Delta-1 | |
| |---|---|---|---|---| |
| | `marsdеmnet-unet-elevation-4block.pt` | Single-output U-Net, 4-block encoder, 7.8M params | 74.38m | 52.86m | 0.418 | |
| | `marsdеmnet-unet-multitask-4block.pt` | Multi-output U-Net, 4-block encoder, 7.8M params | 74.29m | 52.68m | 0.422 | |
| | `marsdеmnet-unet-multitask-3block.pt` | Multi-output U-Net, 3-block encoder, 1.9M params | 82.80m | 58.29m | 0.440 | |
| | `marsdеmnet-unet-multitask-5block.pt` | Multi-output U-Net, 5-block encoder, 31.4M params | 59.88m | 42.67m | 0.409 | |
|
|
| The 5-block multi-output model is the best overall, achieving 19% lower RMSE than the 4-block baseline with no overfitting observed. |
|
|
| ## How to Get Started |
|
|
| ```python |
| import torch |
| from scripts.deeplearning.unet import UNet |
| |
| # Single-output (elevation only) — 4-block |
| model = UNet(in_channels=1, out_channels=1, num_blocks=4, base_ch=32) |
| ckpt = torch.load("marsdеmnet-unet-elevation-4block.pt", map_location="cpu") |
| model.load_state_dict(ckpt["model_state"]) |
| model.eval() |
| |
| # Multi-output (elevation + slope + roughness) — 5-block (best) |
| model = UNet(in_channels=1, out_channels=3, num_blocks=5, base_ch=32) |
| ckpt = torch.load("marsdеmnet-unet-multitask-5block.pt", map_location="cpu") |
| model.load_state_dict(ckpt["model_state"]) |
| model.eval() |
| |
| # Inference |
| with torch.no_grad(): |
| # optical: (1, 1, 518, 518) normalized CTX patch |
| pred = model(optical) |
| # Single-output: pred shape (1, 1, 518, 518) — elevation |
| # Multi-output: pred shape (1, 3, 518, 518) — [elevation, slope, roughness] |
| ``` |
|
|
| Input normalization: clip to 2nd–98th percentile, then z-score per patch. DEM targets are mean-subtracted per patch (relative elevation in meters). |
|
|
| ## Training Details |
|
|
| ### Training Data |
|
|
| MCTED (Mars CTX Terrain-Elevation Dataset) — 80,898 paired CTX orthoimage and DEM patches derived from 1,122 quality-filtered stereo scenes. Geography-aware train/val split at the scene level to prevent spatial leakage. Train: 65,090 patches. Val: 15,808 patches. |
|
|
| ### Training Procedure |
|
|
| - **Optimizer:** AdamW, lr=1e-4, weight_decay=1e-4 |
| - **Schedule:** Cosine annealing to 1e-6 over 50 epochs |
| - **Early stopping:** Patience 10 on val RMSE |
| - **Batch size:** 16 |
| - **Augmentation:** Random horizontal/vertical flips and 90° rotations applied jointly to image and labels |
| - **Loss:** Masked MAE (single-output); weighted sum of masked MAE losses (multi-output, uniform 1:1:1 weights) |
| - **Training regime:** fp32 |
| - **Hardware:** NVIDIA H100 GPU |
| |
| ### Preprocessing |
| |
| - CTX patches: percentile clip (2nd–98th) + per-patch z-score normalization |
| - DEM patches: per-patch mean subtraction (relative elevation) |
| - Validity masking: logical AND of NaN mask and deviation mask; invalid pixels excluded from loss and metrics |
| |
| ## Evaluation |
| |
| ### Metrics |
| |
| - **MAE** — mean absolute elevation error in meters |
| - **RMSE** — primary ranking metric; penalizes large errors |
| - **Delta-1** — fraction of valid pixels where max(pred/gt, gt/pred) < 1.25 |
| |
| ### Results |
| |
| | Model | Params | Val RMSE | Val MAE | Delta-1 | |
| |---|---|---|---|---| |
| | Random Forest (classical baseline) | — | 58.39m (elev std) | 41.29m | — | |
| | Single-output U-Net (4-block) | 7.8M | 74.38m | 52.86m | 0.418 | |
| | Multi-output U-Net uniform (4-block) | 7.8M | 74.29m | 52.68m | 0.422 | |
| | Multi-output U-Net (3-block ablation) | 1.9M | 82.80m | 58.29m | 0.440 | |
| | Multi-output U-Net (5-block ablation) | 31.4M | **59.88m** | **42.67m** | 0.409 | |
| |
| ## Bias, Risks, and Limitations |
| |
| - Models are trained on regions of Mars where stereo DEMs exist, which are geographically biased toward scientifically interesting terrain. Performance on flat, featureless plains may be lower. |
| - Textureless terrain with no illumination gradient provides no depth cue, a known failure mode. |
| - Predictions are relative elevation (mean-subtracted per patch), not absolute MOLA-referenced altitude. |
| - Not suitable for safety-critical mission planning without further validation. |
| |
| ## Technical Specifications |
| |
| ### Model Architecture |
| |
| U-Net encoder-decoder with configurable depth. Each encoder block: Conv2d(3×3) → BatchNorm → ReLU × 2 → MaxPool. Decoder: bilinear upsampling + lateral skip connections. Multi-output variant has three separate 1×1 conv heads for elevation, slope, and roughness. |
| |
| ## Citation |
| |
| If you use MarsDEMNet, please cite: |
| |
| ```bibtex |
| @misc{marsdеmnet2026, |
| title = {MarsDEMNet: Classical and Deep Learning Approaches for Single-Image Digital Elevation Model Prediction from Mars CTX Imagery}, |
| author = {Harshith Kethavath}, |
| year = {2026}, |
| publisher = {GitHub}, |
| url = {https://github.com/harshithkethavath/MarsDEMNet} |
| } |
| ``` |