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Autori principali: Liu, Xiaolu, Li, Yicong, He, Qiyuan, Zhu, Jiayin, Ji, Wei, Yao, Angela, Zhu, Jianke
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.14103
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author Liu, Xiaolu
Li, Yicong
He, Qiyuan
Zhu, Jiayin
Ji, Wei
Yao, Angela
Zhu, Jianke
author_facet Liu, Xiaolu
Li, Yicong
He, Qiyuan
Zhu, Jiayin
Ji, Wei
Yao, Angela
Zhu, Jianke
contents Textured 3D morphing seeks to generate smooth and plausible transitions between two 3D assets, preserving both structural coherence and fine-grained appearance. This ability is crucial not only for advancing 3D generation research but also for practical applications in animation, editing, and digital content creation. Existing approaches either operate directly on geometry, limiting them to shape-only morphing while neglecting textures, or extend 2D interpolation strategies into 3D, which often causes semantic ambiguity, structural misalignment, and texture blurring. These challenges underscore the necessity to jointly preserve geometric consistency, texture alignment, and robustness throughout the transition process. To address this, we propose Interp3D, a novel training-free framework for textured 3D morphing. It harnesses generative priors and adopts a progressive alignment principle to ensure both geometric fidelity and texture coherence. Starting from semantically aligned interpolation in condition space, Interp3D enforces structural consistency via SLAT (Structured Latent)-guided structure interpolation, and finally transfers appearance details through fine-grained texture fusion. For comprehensive evaluations, we construct a dedicated dataset, Interp3DData, with graded difficulty levels and assess generation results from fidelity, transition smoothness, and plausibility. Both quantitative metrics and human studies demonstrate the significant advantages of our proposed approach over previous methods. Source code is available at https://github.com/xiaolul2/Interp3D.
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record_format arxiv
spellingShingle Interp3D: Correspondence-aware Interpolation for Generative Textured 3D Morphing
Liu, Xiaolu
Li, Yicong
He, Qiyuan
Zhu, Jiayin
Ji, Wei
Yao, Angela
Zhu, Jianke
Computer Vision and Pattern Recognition
Textured 3D morphing seeks to generate smooth and plausible transitions between two 3D assets, preserving both structural coherence and fine-grained appearance. This ability is crucial not only for advancing 3D generation research but also for practical applications in animation, editing, and digital content creation. Existing approaches either operate directly on geometry, limiting them to shape-only morphing while neglecting textures, or extend 2D interpolation strategies into 3D, which often causes semantic ambiguity, structural misalignment, and texture blurring. These challenges underscore the necessity to jointly preserve geometric consistency, texture alignment, and robustness throughout the transition process. To address this, we propose Interp3D, a novel training-free framework for textured 3D morphing. It harnesses generative priors and adopts a progressive alignment principle to ensure both geometric fidelity and texture coherence. Starting from semantically aligned interpolation in condition space, Interp3D enforces structural consistency via SLAT (Structured Latent)-guided structure interpolation, and finally transfers appearance details through fine-grained texture fusion. For comprehensive evaluations, we construct a dedicated dataset, Interp3DData, with graded difficulty levels and assess generation results from fidelity, transition smoothness, and plausibility. Both quantitative metrics and human studies demonstrate the significant advantages of our proposed approach over previous methods. Source code is available at https://github.com/xiaolul2/Interp3D.
title Interp3D: Correspondence-aware Interpolation for Generative Textured 3D Morphing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.14103