Generative AI

Stroke of Surprise: Progressive Semantic Illusions in Vector Sketching

HHuai-Hsun ChengSSiang-Ling ZhangYYu-Lun Liu
Published
February 12, 2026
Authors
3
Word Count
8,440

AI-generated sketches that progressively transform meaning as new strokes are added.

Abstract

Visual illusions traditionally rely on spatial manipulations such as multi-view consistency. In this work, we introduce Progressive Semantic Illusions, a novel vector sketching task where a single sketch undergoes a dramatic semantic transformation through the sequential addition of strokes. We present Stroke of Surprise, a generative framework that optimizes vector strokes to satisfy distinct semantic interpretations at different drawing stages. The core challenge lies in the "dual-constraint": initial prefix strokes must form a coherent object (e.g., a duck) while simultaneously serving as the structural foundation for a second concept (e.g., a sheep) upon adding delta strokes. To address this, we propose a sequence-aware joint optimization framework driven by a dual-branch Score Distillation Sampling (SDS) mechanism. Unlike sequential approaches that freeze the initial state, our method dynamically adjusts prefix strokes to discover a "common structural subspace" valid for both targets. Furthermore, we introduce a novel Overlay Loss that enforces spatial complementarity, ensuring structural integration rather than occlusion. Extensive experiments demonstrate that our method significantly outperforms state-of-the-art baselines in recognizability and illusion strength, successfully expanding visual anagrams from the spatial to the temporal dimension. Project page: https://stroke-of-surprise.github.io/

Key Takeaways

  • 1

    Progressive semantic illusions transform sketches over time through joint optimization of multiple semantic targets simultaneously.

  • 2

    Dual-branch Score Distillation Sampling guides initial strokes to satisfy two competing visual interpretations without destructive modification.

  • 3

    Vector-based sketching enables recontextualization where initial strokes maintain recognizability while serving as structural foundation for alternate meanings.

Limitations

  • Previous raster-based methods destructively modified initial strokes, obliterating the first concept during transformation.

  • Sequential vector models greedily optimized for first concept only, creating semantic noise when extending to second target.

Keywords

vector sketchingsemantic transformationStroke of Surprisegenerative frameworkdual-branch Score Distillation Samplingsequential optimizationstructural subspaceOverlay Lossvisual anagrams

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Stroke of Surprise: Progressive Semantic Illusions in Vector Sketching | Paperchime