HPFF: Hierarchical Locally Supervised Learning with Patch Feature Fusion
Junhao Su, Chenghao He, Feiyu Zhu, Xiaojie Xu, Dongzhi Guan, Chenyang, Si

TL;DR
The paper introduces HPFF, a hierarchical locally supervised learning model with patch feature fusion that reduces memory usage and improves performance in deep learning tasks.
Contribution
It proposes a novel hierarchical locally supervised learning framework with patch-level feature computation to enhance learning and efficiency.
Findings
HPFF outperforms previous methods on multiple datasets.
The model demonstrates strong generalization capabilities.
Patch feature fusion reduces GPU memory consumption.
Abstract
Traditional deep learning relies on end-to-end backpropagation for training, but it suffers from drawbacks such as high memory consumption and not aligning with biological neural networks. Recent advancements have introduced locally supervised learning, which divides networks into modules with isolated gradients and trains them locally. However, this approach can lead to performance lag due to limited interaction between these modules, and the design of auxiliary networks occupies a certain amount of GPU memory. To overcome these limitations, we propose a novel model called HPFF that performs hierarchical locally supervised learning and patch-level feature computation on the auxiliary networks. Hierarchical Locally Supervised Learning (HiLo) enables the network to learn features at different granularity levels along their respective local paths. Specifically, the network is divided into…
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Taxonomy
TopicsFace and Expression Recognition
MethodsFocus
