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t-gems: text-guided exit modules for decreasing clip image encoder
May 17, 2026 ยท Grace Period ยท ๐ ICASSP 2026
Authors
Alberto Presta, Grzegorz Stefanski, Michal Byra, Krzysztof Arendt
arXiv ID
2605.17499
Category
cs.LG: Machine Learning
Citations
0
Venue
ICASSP 2026
Abstract
Multimodal deep neural networks enhance deep comprehension by integrating diverse data modalities. Data from different modalities are typically projected into a shared latent space for similarity computation, but this process is resource intensive due to large image encoders and equal processing of test data during prediction. Early exit methods reduce computational load by utilizing intermediate layers, saving time and memory. However, developing such methods is challenging for multimodal data like image-text pairs. This study investigates the semantic content distributions present in intermediate layers of encoders such as CLIP, which can be derived from textual descriptions. We introduce Text-Guided Exit Modules (T-GEMs) and a rate-based regularizer to control encoder usage costs while maintaining cross-modal understanding performance.
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