CVIVJun 1

Hist2Style: Histogram-Guided Stylization with Bilateral Grids

arXiv:2606.018190.35
AI Analysis45

For graphics and vision practitioners, Hist2Style provides a lightweight, interpretable alternative to large image models for photorealistic style transfer, addressing computational and control limitations.

Hist2Style introduces a bilateral-grid formulation for fast, edge-aware photorealistic stylization that preserves content structure and avoids hallucinations, enabling real-time, high-resolution color and tone adjustments with user control.

Photorealistic style transfer aims to match the color and tone of an input image to that of a style target while preserving the content and details of the original scene. Although existing large image models can facilitate these kinds of appearance edits, their high computational demands, potential for hallucinations, and limited user control make them unsuitable for high-resolution, real-time workflows. We introduce Hist2Style, a bilateral-grid formulation for fast, edge-aware stylization that preserves visual fidelity by constraining operations to locally affine transforms in bilateral space. Our model distills a large image editing model into a lightweight network by training on a large supervised corpus generated with language and vision-language models, targeting spatially varying color edits. The network conditions on a histogram-based embedding of the style target to provide an interpretable interface for adjusting the output style by modifying the target color distribution. Overall, Hist2Style maintains content structure by construction, avoids hallucinations, and supports real-time, high-resolution photorealistic stylization with interactive user-controllable color and tone adjustments.

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