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Main Authors: Wang, Jianfeng, M'Charrak, Amine, Koska, Luk, Wang, Xiangtao, Petriceanu, Daniel, Smyrnov, Mykyta, Wang, Ruizhi, Bumbar, Michael, Pinchetti, Luca, Lukasiewicz, Thomas
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.25157
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author Wang, Jianfeng
M'Charrak, Amine
Koska, Luk
Wang, Xiangtao
Petriceanu, Daniel
Smyrnov, Mykyta
Wang, Ruizhi
Bumbar, Michael
Pinchetti, Luca
Lukasiewicz, Thomas
author_facet Wang, Jianfeng
M'Charrak, Amine
Koska, Luk
Wang, Xiangtao
Petriceanu, Daniel
Smyrnov, Mykyta
Wang, Ruizhi
Bumbar, Michael
Pinchetti, Luca
Lukasiewicz, Thomas
contents Recent vision and multimodal foundation backbones, such as Transformer families and state-space models like Mamba, have achieved remarkable progress, enabling unified modeling across images, text, and beyond. Despite their empirical success, these architectures remain far from the computational principles of the human brain, often demanding enormous amounts of training data while offering limited interpretability. In this work, we propose the Vision Hopfield Memory Network (V-HMN), a brain-inspired foundation backbone that integrates hierarchical memory mechanisms with iterative refinement updates. Specifically, V-HMN incorporates local Hopfield modules that provide associative memory dynamics at the image patch level, global Hopfield modules that function as episodic memory for contextual modulation, and a predictive-coding-inspired refinement rule for iterative error correction. By organizing these memory-based modules hierarchically, V-HMN captures both local and global dynamics in a unified framework. Memory retrieval exposes the relationship between inputs and stored patterns, making decisions more interpretable, while the reuse of stored patterns improves data efficiency. This brain-inspired design therefore enhances interpretability and data efficiency beyond existing self-attention- or state-space-based approaches. We conducted extensive experiments on public computer vision benchmarks, and V-HMN achieved competitive results against widely adopted backbone architectures, while offering better interpretability, higher data efficiency, and stronger biological plausibility. These findings highlight the potential of V-HMN to serve as a next-generation vision foundation model, while also providing a generalizable blueprint for multimodal backbones in domains such as text and audio, thereby bridging brain-inspired computation with large-scale machine learning.
format Preprint
id arxiv_https___arxiv_org_abs_2603_25157
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Vision Hopfield Memory Networks
Wang, Jianfeng
M'Charrak, Amine
Koska, Luk
Wang, Xiangtao
Petriceanu, Daniel
Smyrnov, Mykyta
Wang, Ruizhi
Bumbar, Michael
Pinchetti, Luca
Lukasiewicz, Thomas
Machine Learning
Artificial Intelligence
Computer Vision and Pattern Recognition
Recent vision and multimodal foundation backbones, such as Transformer families and state-space models like Mamba, have achieved remarkable progress, enabling unified modeling across images, text, and beyond. Despite their empirical success, these architectures remain far from the computational principles of the human brain, often demanding enormous amounts of training data while offering limited interpretability. In this work, we propose the Vision Hopfield Memory Network (V-HMN), a brain-inspired foundation backbone that integrates hierarchical memory mechanisms with iterative refinement updates. Specifically, V-HMN incorporates local Hopfield modules that provide associative memory dynamics at the image patch level, global Hopfield modules that function as episodic memory for contextual modulation, and a predictive-coding-inspired refinement rule for iterative error correction. By organizing these memory-based modules hierarchically, V-HMN captures both local and global dynamics in a unified framework. Memory retrieval exposes the relationship between inputs and stored patterns, making decisions more interpretable, while the reuse of stored patterns improves data efficiency. This brain-inspired design therefore enhances interpretability and data efficiency beyond existing self-attention- or state-space-based approaches. We conducted extensive experiments on public computer vision benchmarks, and V-HMN achieved competitive results against widely adopted backbone architectures, while offering better interpretability, higher data efficiency, and stronger biological plausibility. These findings highlight the potential of V-HMN to serve as a next-generation vision foundation model, while also providing a generalizable blueprint for multimodal backbones in domains such as text and audio, thereby bridging brain-inspired computation with large-scale machine learning.
title Vision Hopfield Memory Networks
topic Machine Learning
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.25157