CVNov 6, 2023

Asymmetric Masked Distillation for Pre-Training Small Foundation Models

arXiv:2311.03149v213 citationsh-index: 17Has Code
Originality Incremental advance
AI Analysis

This work addresses the need for efficient, small foundation models in computer vision, offering an incremental improvement over existing masked autoencoding methods.

The paper tackles the problem of high computational cost in large self-supervised foundation models by proposing an asymmetric masked distillation framework for pre-training small vision transformer models, achieving 84.6% classification accuracy on IN1K and a 3.7% improvement on Something-in-Something V2 with ViT-B.

Self-supervised foundation models have shown great potential in computer vision thanks to the pre-training paradigm of masked autoencoding. Scale is a primary factor influencing the performance of these foundation models. However, these large foundation models often result in high computational cost. This paper focuses on pre-training relatively small vision transformer models that could be efficiently adapted to downstream tasks. Specifically, taking inspiration from knowledge distillation in model compression, we propose a new asymmetric masked distillation (AMD) framework for pre-training relatively small models with autoencoding. The core of AMD is to devise an asymmetric masking strategy, where the teacher model is enabled to see more context information with a lower masking ratio, while the student model is still equipped with a high masking ratio. We design customized multi-layer feature alignment between the teacher encoder and student encoder to regularize the pre-training of student MAE. To demonstrate the effectiveness and versatility of AMD, we apply it to both ImageMAE and VideoMAE for pre-training relatively small ViT models. AMD achieved 84.6% classification accuracy on IN1K using the ViT-B model. And AMD achieves 73.3% classification accuracy using the ViT-B model on the Something-in-Something V2 dataset, a 3.7% improvement over the original ViT-B model from VideoMAE. We also transfer AMD pre-trained models to downstream tasks and obtain consistent performance improvement over the original masked autoencoding. The code and models are available at https://github.com/MCG-NJU/AMD.

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