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PRISM: A Unified Framework for Photorealistic Reconstruction and Intrinsic Scene Modeling

About

We present PRISM, a unified framework that enables multiple image generation and editing tasks in a single foundational model. Starting from a pre-trained text-to-image diffusion model, PRISM proposes an effective fine-tuning strategy to produce RGB images along with intrinsic maps (referred to as X layers) simultaneously. Unlike previous approaches, which infer intrinsic properties individually or require separate models for decomposition and conditional generation, PRISM maintains consistency across modalities by generating all intrinsic layers jointly. It supports diverse tasks, including text-to-RGBX generation, RGB-to-X decomposition, and X-to-RGBX conditional generation. Additionally, PRISM enables both global and local image editing through conditioning on selected intrinsic layers and text prompts. Extensive experiments demonstrate the competitive performance of PRISM both for intrinsic image decomposition and conditional image generation while preserving the base model's text-to-image generation capability.

Alara Dirik, Tuanfeng Wang, Duygu Ceylan, Stefanos Zafeiriou, Anna Fr\"uhst\"uck• 2025

Related benchmarks

TaskDatasetResultRank
Surface Normal EstimationNYU V2--
23
Albedo EstimationARAP
LMSE0.022
19
Depth EstimationETH3D (test)
AbsRel0.142
17
Albedo EstimationIIW v1.1 (test)
WHDR 10%17.2
11
Albedo EstimationInteriorverse (test)
PSNR19.9
10
Intrinsic Image Decomposition (Albedo)Hypersim (test)
PSNR19.3
10
Albedo EstimationMAW
Intensity (×100)0.71
10
Relative Depth EstimationNYU v2 (test)
AbsRel0.061
9
Intrinsic Image Decomposition (Irradiance)Hypersim (test)
PSNR18.5
8
Surface Normal EstimationDIODE
Mean Angle Error14.6
8
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