AI4Code
Srikanth Tamilselvam, Dinesh Khandelwal, et al.
ACML 2022
Style Transfer aims at transferring the artistic style from a reference image to a content image. While Deep Learning (DL) has achieved state-of-The-Art Style Transfer performance using Convolutional Neural Networks (CNN), its real-Time application still requires powerful hardware such as GPU-Accelerated systems. This paper leverages transformer-based models to accelerate real-Time Style Transfer on mobile and embedded hardware platforms. We designed a Neural Architecture Search (NAS) algorithm dedicated to vision transformers to find the best set of architecture hyperparameters that maximizes the Style Transfer performance, expressed in Frame/seconds (FPS). Our approach has been evaluated and validated on the Xiaomi Redmi 7 mobile phone and the Raspberry Pi 3 platform. Experimental evaluation shows that our approach allows to achieve a 3.5x and 2.1x speedups compared to CNN-based Style Transfer models and Transformer-based models respectively1.
Srikanth Tamilselvam, Dinesh Khandelwal, et al.
ACML 2022
Eduardo Almeida Soares, Victor Shirasuna, et al.
ACS Fall 2024
Conrad Albrecht, Jannik Schneider, et al.
CVPR 2025
Andrew Rouditchenko, Angie Boggust, et al.
INTERSPEECH 2021