ArXiv TLDR

SyMTRS: Benchmark Multi-Task Synthetic Dataset for Depth, Domain Adaptation and Super-Resolution in Aerial Imagery

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2604.21801

Safouane El Ghazouali, Nicola Venturi, Michael Rueegsegger, Umberto Michelucci

cs.CVcs.AI

TLDR

SyMTRS is a new synthetic dataset for aerial imagery, providing high-resolution RGB, depth, night-time, and multi-scale data for multi-task research.

Key contributions

  • Introduces SyMTRS, a large-scale synthetic dataset with pixel-perfect ground truth for aerial imagery.
  • Provides high-resolution RGB, depth maps, night-time variants, and aligned low-resolution images (x2, x4, x8).
  • Designed as a unified multi-task benchmark for monocular depth, domain adaptation, and super-resolution.
  • Aims to bridge gaps in remote sensing by enabling controlled experiments with perfect geometric and multi-domain supervision.

Why it matters

This paper introduces SyMTRS, a crucial synthetic dataset addressing significant gaps in remote sensing research. By providing perfect geometric ground truth and consistent multi-domain supervision, it enables controlled experiments and advances in monocular depth, domain adaptation, and super-resolution for aerial scenes. This will accelerate progress in deep learning for remote sensing applications.

Original Abstract

Recent advances in deep learning for remote sensing rely heavily on large annotated datasets, yet acquiring high-quality ground truth for geometric, radiometric, and multi-domain tasks remains costly and often infeasible. In particular, the lack of accurate depth annotations, controlled illumination variations, and multi-scale paired imagery limits progress in monocular depth estimation, domain adaptation, and super-resolution for aerial scenes. We present SyMTRS, a large-scale synthetic dataset generated using a high-fidelity urban simulation pipeline. The dataset provides high-resolution RGB aerial imagery (2048 x 2048), pixel-perfect depth maps, night-time counterparts for domain adaptation, and aligned low-resolution variants for super-resolution at x2, x4, and x8 scales. Unlike existing remote sensing datasets that focus on a single task or modality, SyMTRS is designed as a unified multi-task benchmark enabling joint research in geometric understanding, cross-domain robustness, and resolution enhancement. We describe the dataset generation process, its statistical properties, and its positioning relative to existing benchmarks. SyMTRS aims to bridge critical gaps in remote sensing research by enabling controlled experiments with perfect geometric ground truth and consistent multi-domain supervision. The results obtained in this work can be reproduced from this Github repository: https://github.com/safouaneelg/SyMTRS.

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