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Layer-Specific Prompt Fusion Discovery via Differentiable Search in Vision Foundation Models

This paper proposes a differentiable architecture search method to automatically discover the optimal fusion scheme for combining image and prompt tokens in visual prompt tuning. The approach jointly optimizes learnable prompts and their fusion mechanisms, introducing affine transformation and cross-attention as new fusion schemes. Experiments on 34 datasets demonstrate consistent improvements over baselines, revealing that hybrid fusion better leverages layer semantics in Vision Transformers.

SourcearXiv Computer VisionAuthor: Xi Xiao, Xingjian Li, Yunbei Zhang, Cheng Han, Tianming Liu, Tianyang Wang, Runmin Jiang, Jihun Hamm, Xiao Wang, Min Xu

[2606.26379] Layer-Specific Prompt Fusion Discovery via Differentiable Search in Vision Foundation Models

[Submitted on 24 Jun 2026]

Title:Layer-Specific Prompt Fusion Discovery via Differentiable Search in Vision Foundation Models

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Abstract:Visual prompt tuning has emerged as a parameter-efficient fine-tuning approach for adapting large-scale Vision Transformers (ViTs) to downstream tasks. As its learnable prompts are applied in input and feature spaces, prior to jointly going through attention in transformer layers, the most commonly used scheme for fusing image and prompt tokens is concatenation or addition. In this paper, we aim to study a fundamental yet essential problem in visual prompt tuning: whether a single fusion scheme tends to yield better results, and whether that would be beneficial to develop a hybrid fusion scheme. To this end, we formulate the task as a bi-level optimization problem, and solve it leveraging differentiable architecture search. In this context, the learnable prompts and their fusion schemes are jointly optimized. To enrich the search space in the architecture search, we propose two additional fusion schemes, namely, affine transformation and cross-attention, in addition to concatenation and addition. Extensive experiments on 34 datasets spanning VTAB-1k, FGVC, and HTA show consistent gains over prompt-tuning baselines. With a frozen ViT backbone, our method delivers a favorable accuracy--latency--parameter trade-off compared with VPT-Deep and recent variants. Our findings reveal that how prompts fuse with image tokens plays a significant role in visual prompt tuning, and a hybrid fusion fashion can more effectively leverage layer semantics of ViTs, contributing a novel perspective for visual prompt-tuning research.

Comments: ECCV 2026

Subjects:

Computer Vision and Pattern Recognition (cs.CV)

Cite as: arXiv:2606.26379 [cs.CV]

(or arXiv:2606.26379v1 [cs.CV] for this version)

https://doi.org/10.48550/arXiv.2606.26379

arXiv-issued DOI via DataCite (pending registration)

Submission history

From: Xi Xiao [view email] [v1] Wed, 24 Jun 2026 21:06:23 UTC (2,335 KB)

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