CVMar 14

Seeing Through the PRISM: Compound & Controllable Restoration of Scientific Images

DeepMind
arXiv:2603.1415171.6h-index: 3
AI Analysis

This addresses the need for controllable, high-fidelity image restoration in scientific domains like microscopy and remote sensing, where preserving meaningful signal is critical.

The paper tackles the problem of restoring scientific images with multiple overlapping degradations, presenting PRISM, a prompted conditional diffusion framework that outperforms state-of-the-art baselines on complex compound degradations and enables selective restoration through natural language prompts.

Scientific and environmental imagery often suffer from complex mixtures of noise related to the sensor and the environment. Existing restoration methods typically remove one degradation at a time, leading to cascading artifacts, overcorrection, or loss of meaningful signal. In scientific applications, restoration must be able to simultaneously handle compound degradations while allowing experts to selectively remove subsets of distortions without erasing important features. To address these challenges, we present PRISM (Precision Restoration with Interpretable Separation of Mixtures). PRISM is a prompted conditional diffusion framework which combines compound-aware supervision over mixed degradations with a weighted contrastive disentanglement objective that aligns primitives and their mixtures in the latent space. This compositional geometry enables high-fidelity joint removal of overlapping distortions while also allowing flexible, targeted fixes through natural language prompts. Across microscopy, wildlife monitoring, remote sensing, and urban weather datasets, PRISM outperforms state-of-the-art baselines on complex compound degradations, including zero-shot mixtures not seen during training. Importantly, we show that selective restoration significantly improves downstream scientific accuracy in several domains over standard "black-box" restoration. These results establish PRISM as a generalizable and controllable framework for high-fidelity restoration in domains where scientific utility is a priority.

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