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Main Authors: Zhang, Fei, Zhou, Zijian, Tang, Bohao, He, Sen, Li, Hang, Wang, Zhe, Sanyal, Soubhik, Liu, Pengfei, Atliha, Viktar, Xiang, Tao, Xu, Frost, Gunel, Semih
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.17944
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author Zhang, Fei
Zhou, Zijian
Tang, Bohao
He, Sen
Li, Hang
Wang, Zhe
Sanyal, Soubhik
Liu, Pengfei
Atliha, Viktar
Xiang, Tao
Xu, Frost
Gunel, Semih
author_facet Zhang, Fei
Zhou, Zijian
Tang, Bohao
He, Sen
Li, Hang
Wang, Zhe
Sanyal, Soubhik
Liu, Pengfei
Atliha, Viktar
Xiang, Tao
Xu, Frost
Gunel, Semih
contents We introduce the first method, to the best of our knowledge, for adapting image-to-video models to layer-aware text (glyph) animation, a capability critical for practical dynamic visual design. Existing approaches predominantly handle the transparency-encoding (alpha channel) as an extra latent dimension appended to the RGB space, necessitating the reconstruction of the underlying RGB-centric variational autoencoder (VAE). However, given the scarcity of high-quality transparent glyph data, retraining the VAE is computationally expensive and may erode the robust semantic priors learned from massive RGB corpora, potentially leading to latent pattern mixing. To mitigate these limitations, we propose TransText, a framework based on a novel Alpha-as-RGB paradigm to jointly model appearance and transparency without modifying the pre-trained generative manifold. TransText embeds the alpha channel as an RGB-compatible visual signal through latent spatial concatenation, explicitly ensuring strict cross-modal (RGB-and-Alpha) consistency while preventing feature entanglement. Our experiments demonstrate that TransText significantly outperforms baselines, generating coherent, high-fidelity transparent animations with diverse, fine-grained effects.
format Preprint
id arxiv_https___arxiv_org_abs_2603_17944
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TransText: Alpha-as-RGB Representation for Transparent Text Animation
Zhang, Fei
Zhou, Zijian
Tang, Bohao
He, Sen
Li, Hang
Wang, Zhe
Sanyal, Soubhik
Liu, Pengfei
Atliha, Viktar
Xiang, Tao
Xu, Frost
Gunel, Semih
Computer Vision and Pattern Recognition
We introduce the first method, to the best of our knowledge, for adapting image-to-video models to layer-aware text (glyph) animation, a capability critical for practical dynamic visual design. Existing approaches predominantly handle the transparency-encoding (alpha channel) as an extra latent dimension appended to the RGB space, necessitating the reconstruction of the underlying RGB-centric variational autoencoder (VAE). However, given the scarcity of high-quality transparent glyph data, retraining the VAE is computationally expensive and may erode the robust semantic priors learned from massive RGB corpora, potentially leading to latent pattern mixing. To mitigate these limitations, we propose TransText, a framework based on a novel Alpha-as-RGB paradigm to jointly model appearance and transparency without modifying the pre-trained generative manifold. TransText embeds the alpha channel as an RGB-compatible visual signal through latent spatial concatenation, explicitly ensuring strict cross-modal (RGB-and-Alpha) consistency while preventing feature entanglement. Our experiments demonstrate that TransText significantly outperforms baselines, generating coherent, high-fidelity transparent animations with diverse, fine-grained effects.
title TransText: Alpha-as-RGB Representation for Transparent Text Animation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.17944