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Autori principali: Su, Xia, Nguyen, Cuong, Gadelha, Matheus A., Froehlich, Jon E.
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.02263
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author Su, Xia
Nguyen, Cuong
Gadelha, Matheus A.
Froehlich, Jon E.
author_facet Su, Xia
Nguyen, Cuong
Gadelha, Matheus A.
Froehlich, Jon E.
contents 2.5D effects, such as occlusion and perspective foreshortening, enhance visual dynamics and realism by incorporating 3D depth cues into 2D designs. However, creating such effects remains challenging and labor-intensive due to the complexity of depth perception. We introduce DepthScape, a human-AI collaborative system that facilitates 2.5D effect creation by directly placing design elements into 3D reconstructions. Using monocular depth reconstruction, DepthScape transforms images into 3D reconstructions where visual contents are placed to automatically achieve realistic occlusion and perspective foreshortening. To further simplify 3D placement through a 2D viewport, DepthScape uses a vision-language model to analyze source images and extract key visual components as content anchors for direct manipulation editing. We evaluate DepthScape with nine participants of varying design backgrounds, confirming the effectiveness of our creation pipeline. We also test on 100 professional stock images to assess robustness, and conduct an expert evaluation that confirms the quality of DepthScape's results.
format Preprint
id arxiv_https___arxiv_org_abs_2512_02263
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle DepthScape: Authoring 2.5D Designs via Depth Estimation, Semantic Understanding, and Geometry Extraction
Su, Xia
Nguyen, Cuong
Gadelha, Matheus A.
Froehlich, Jon E.
Human-Computer Interaction
Graphics
2.5D effects, such as occlusion and perspective foreshortening, enhance visual dynamics and realism by incorporating 3D depth cues into 2D designs. However, creating such effects remains challenging and labor-intensive due to the complexity of depth perception. We introduce DepthScape, a human-AI collaborative system that facilitates 2.5D effect creation by directly placing design elements into 3D reconstructions. Using monocular depth reconstruction, DepthScape transforms images into 3D reconstructions where visual contents are placed to automatically achieve realistic occlusion and perspective foreshortening. To further simplify 3D placement through a 2D viewport, DepthScape uses a vision-language model to analyze source images and extract key visual components as content anchors for direct manipulation editing. We evaluate DepthScape with nine participants of varying design backgrounds, confirming the effectiveness of our creation pipeline. We also test on 100 professional stock images to assess robustness, and conduct an expert evaluation that confirms the quality of DepthScape's results.
title DepthScape: Authoring 2.5D Designs via Depth Estimation, Semantic Understanding, and Geometry Extraction
topic Human-Computer Interaction
Graphics
url https://arxiv.org/abs/2512.02263