Source code for geobench_v2.datamodules.pastis

# Copyright (c) 2025 GeoBenchV2. All rights reserved.
# Licensed under the Apache License 2.0.

"""PASTIS DataModule."""

import os
from collections.abc import Callable, Sequence
from typing import Any

import matplotlib.pyplot as plt
import numpy as np
import pandas as pd
import tacoreader
import torch
import torch.nn as nn
from einops import rearrange
from torchgeo.datasets.utils import percentile_normalization

from geobench_v2.datasets import GeoBenchPASTIS

from .base import GeoBenchSegmentationDataModule


# TODO add timeseries argument
[docs] class GeoBenchPASTISDataModule(GeoBenchSegmentationDataModule): """GeoBench PASIS Data Module."""
[docs] def __init__( self, img_size: int = 128, band_order: Sequence[float | str] = GeoBenchPASTIS.band_default_order, batch_size: int = 32, eval_batch_size: int = 64, num_workers: int = 0, collate_fn: Callable | None = None, train_augmentations: nn.Module | None = None, eval_augmentations: nn.Module | None = None, pin_memory: bool = False, **kwargs: Any, ) -> None: """Initialize GeoBench PASIS DataModule. Args: img_size: Image size band_order: The order of bands to return in the sample batch_size: Batch size during training eval_batch_size: Evaluation batch size num_workers: Number of workers collate_fn: Collate function train_augmentations: Transforms/Augmentations to apply during training, they will be applied at the sample level and should include normalization. See :meth:`define_augmentations` for the default transformation. eval_augmentations: Transforms/Augmentations to apply during evaluation, they will be applied at the sample level and should include normalization. See :meth:`define_augmentations` for the default transformation. pin_memory: Pin memory **kwargs: Additional keyword arguments for:class:`~geobench_v2.datasets.pastis.GeoBenchPASTIS`. """ super().__init__( dataset_class=GeoBenchPASTIS, band_order=band_order, img_size=img_size, batch_size=batch_size, eval_batch_size=eval_batch_size, num_workers=num_workers, collate_fn=collate_fn, train_augmentations=train_augmentations, eval_augmentations=eval_augmentations, pin_memory=pin_memory, **kwargs, )
[docs] def load_metadata(self) -> pd.DataFrame: """Load metadata file. Returns: pandas DataFrame with metadata. """ return tacoreader.load( [os.path.join(self.kwargs["root"], f) for f in GeoBenchPASTIS.paths] )
[docs] def visualize_batch( self, batch: dict[str, Any] | None = None, split: str = "train" ) -> tuple[Any, dict[str, Any]]: """Visualize a batch of data. Args: batch: Optional batch of data. If not provided, a batch will be fetched from the dataloader split: One of 'train', 'validation', 'test' Returns: The matplotlib figure and the batch of data Raises: AssertionError: If bands needed for plotting are missing """ if split == "train": batch = next(iter(self.train_dataloader())) elif split == "validation": batch = next(iter(self.val_dataloader())) else: batch = next(iter(self.test_dataloader())) for k, v in batch.items(): orig_dim = v.dim() if orig_dim == 4: # CxTxHxW -> TxCxHxW batch[k] = batch[k].permute(1, 0, 2, 3) elif orig_dim == 5: # BxCxTxHxW -> BxTxCxHxW batch[k] = batch[k].permute(0, 2, 1, 3, 4) if hasattr(self.data_normalizer, "unnormalize"): batch = self.data_normalizer.unnormalize(batch) batch_size = batch["mask"].shape[0] n_samples = min(8, batch_size) indices = torch.randperm(batch_size)[:n_samples] # Collect modality images and determine timesteps per modality modalities = {} timesteps_per_mod: dict[str, int] = {} for mod in self.band_order.keys(): mod_plot_bands = self.dataset_band_config.modalities[mod].plot_bands missing_bands = [ band for band in mod_plot_bands if band not in self.band_order[mod] ] if missing_bands: raise AssertionError( f"Plotting bands {missing_bands} for modality '{mod}' not found in band_order {self.band_order[mod]}" ) # Get plot indices for bands that exist mod_plot_indices = [ self.band_order[mod].index(band) for band in mod_plot_bands ] tensor = batch[f"image_{mod}"] if tensor.ndim == 5: # time series data [B, T, C H, W] -> [b, t, h, w, c] mod_images = tensor[indices][:, :, mod_plot_indices, :, :] mod_images = ( rearrange(mod_images, "b t c h w -> b t h w c").cpu().numpy() ) timesteps_per_mod[mod] = mod_images.shape[1] else: # single image data [B, C, H, W] -> [b, 1, h, w, c] mod_images = tensor[indices][:, mod_plot_indices, :, :] mod_images = rearrange(mod_images, "b c h w -> b 1 h w c").cpu().numpy() timesteps_per_mod[mod] = 1 modalities[mod] = mod_images # Global layout: for each sample, stack timesteps vertically t_max = max(timesteps_per_mod.values()) if timesteps_per_mod else 1 num_modalities = len(modalities) + 1 # +1 for mask column fig, axes = plt.subplots( n_samples * t_max, num_modalities, figsize=(num_modalities * 4, 3 * n_samples * t_max), gridspec_kw={"width_ratios": num_modalities * [1]}, ) if axes.ndim == 1: axes = axes.reshape(1, -1) # Add row labels for timesteps (t=0, t=1, ...) for i in range(n_samples): for t in range(t_max): row_idx = i * t_max + t ax_label = axes[row_idx, 0] ax_label.text( -0.06, 0.5, f"t={t}", transform=ax_label.transAxes, va="center", ha="right", fontsize=10, ) masks = batch["mask"][indices] unique_classes = torch.unique(masks).cpu().numpy() unique_classes = [ int(cls) for cls in unique_classes if cls < len(self.class_names) ] # use tab20 colormap to color the unique classes found cmap = plt.cm.tab20 colors = { i: cmap(i) for i in range(len(self.class_names)) if i in unique_classes } class_cmap = plt.cm.colors.ListedColormap(colors.values()) # Build legend handles once legend_elements = [] for cls in unique_classes: if cls < len(self.class_names) and cls in colors: legend_elements.append( plt.Rectangle( (0, 0), 1, 1, color=colors[cls], label=f"{self.class_names[cls]}", ) ) # Plot modality_list = list(modalities.keys()) for i in range(n_samples): for j, mod in enumerate(modality_list): mod_images = modalities[mod] # [b, t, h, w, c] t_len = timesteps_per_mod[mod] for t in range(t_max): row_idx = i * t_max + t ax = axes[row_idx, j] if t < t_len: plot_img = mod_images[i, t] # Special handling for SAR style if applicable if mod in ["s1_asc", "s1_desc"] and plot_img.shape[-1] >= 2: vv = plot_img[..., 0] vh = plot_img[..., 1] vv = percentile_normalization(vv, lower=2, upper=98) vh = percentile_normalization(vh, lower=2, upper=98) ratio = np.divide( vv, vh, out=np.zeros_like(vv), where=vh != 0 ) vv = np.clip(vv / 0.3, a_min=0, a_max=1) vh = np.clip(vh / 0.05, a_min=0, a_max=1) ratio = np.clip(ratio / 25, a_min=0, a_max=1) img = np.stack((vv, vh, ratio), axis=2) else: img = percentile_normalization(plot_img, lower=2, upper=98) ax.imshow(img) if i == 0 and t == 0: ax.set_title(f"{mod} image", fontsize=16) else: ax.axis("off") ax.axis("off") # Mask column (last) for t in range(t_max): row_idx = i * t_max + t ax = axes[row_idx, -1] if t == 0: mask_img = masks[i].cpu().numpy() ax.imshow( mask_img, cmap=class_cmap, vmin=0, vmax=max(unique_classes) if unique_classes else 1, ) ax.set_title("Mask", fontsize=16) else: ax.axis("off") ax.axis("off") # Compute legend layout n_classes = len(legend_elements) ncols = min(6, max(1, n_classes)) legend = fig.legend( handles=legend_elements, loc="upper center", bbox_to_anchor=(0.5, 1.0), ncol=ncols, fontsize=12.0, title="Classes", title_fontsize=14, frameon=False, # tighter legend paddings reduce vertical space borderaxespad=0.0, handlelength=0.9, handletextpad=0.3, columnspacing=0.8, labelspacing=0.2, ) # Render once to get accurate legend bbox fig.canvas.draw() renderer = fig.canvas.get_renderer() bbox = legend.get_window_extent(renderer=renderer) fig_w, fig_h = fig.get_size_inches() legend_h_frac = (bbox.height / (fig_h * fig.dpi)) + 0.006 fig.subplots_adjust(left=0.02, right=0.98, bottom=0.02, top=1.0 - legend_h_frac) return fig, batch
[docs] def visualize_geolocation_distribution(self) -> None: """Visualize the geolocation distribution of the dataset.""" pass