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ECAI 2024

StyleMamba: State Space Model for Efficient Text-Driven Image Style Transfer

Conference Paper Accepted Paper Artificial Intelligence

Abstract

We present StyleMamba, an efficient image style transfer framework that translates text prompts into corresponding visual styles while preserving the content integrity of the original images. Existing text-guided stylization requires hundreds of training iterations and takes a lot of computing resources. To speed up the process, we propose a conditional State Space Model for Efficient Text-driven Image Style Transfer, dubbed StyleMamba, that sequentially aligns the image features to the target text prompts. To enhance the local and global style consistency between text and image, we propose masked and second-order directional losses to optimize the stylization direction to significantly reduce the training iterations by 5× and the inference time by 3×. Extensive experiments and qualitative evaluation confirm the robust and superior stylization performance of our methods compared to the existing baselines. Full code of this paper can be found in https: //github. com/OliverDOU776/StyleMamba.

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Context

Venue
European Conference on Artificial Intelligence
Archive span
1982-2025
Indexed papers
5223
Paper id
588278564995546518