Noise2Map: End-to-End Diffusion Model for Semantic Segmentation and Change Detection
Ali Shibli, Andrea Nascetti, Yifang Ban

TL;DR
Noise2Map introduces a diffusion-based framework for semantic segmentation and change detection in remote sensing, enabling fast, interpretable, and robust discriminative learning without extensive pretraining.
Contribution
It repurposes diffusion models for direct discriminative tasks, avoiding costly sampling and supporting multi-task learning with a shared backbone.
Findings
Outperforms seven models on multiple datasets in segmentation and change detection.
Demonstrates robustness against different training noise schedules and timestep controls.
Supports multi-task learning with a shared architecture.
Abstract
Semantic segmentation and change detection are two fundamental challenges in remote sensing, requiring models to capture either spatial semantics or temporal differences from satellite imagery. Existing deep learning models often struggle with temporal inconsistencies or in capturing fine-grained spatial structures, require extensive pretraining, and offer limited interpretability - especially in real-world remote sensing scenarios. Recent advances in diffusion models show that Gaussian noise can be systematically leveraged to learn expressive data representations through denoising. Motivated by this, we investigate whether the noise process in diffusion models can be effectively utilized for discriminative tasks. We propose Noise2Map, a unified diffusion-based framework that repurposes the denoising process for fast, end-to-end discriminative learning. Unlike prior work that uses…
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