CVMar 4, 2023

PixMIM: Rethinking Pixel Reconstruction in Masked Image Modeling

arXiv:2303.02416v244 citationsh-index: 87Has Code
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This provides an incremental improvement for self-supervised learning in computer vision by simplifying MIM frameworks.

The paper tackles the problem of computational overhead in Masked Image Modeling (MIM) by analyzing pixel reconstruction bottlenecks and proposes a simple method that filters high-frequency components and uses conservative data transforms, improving MAE, ConvMAE, and LSMAE across various downstream tasks with negligible extra computation.

Masked Image Modeling (MIM) has achieved promising progress with the advent of Masked Autoencoders (MAE) and BEiT. However, subsequent works have complicated the framework with new auxiliary tasks or extra pre-trained models, inevitably increasing computational overhead. This paper undertakes a fundamental analysis of MIM from the perspective of pixel reconstruction, which examines the input image patches and reconstruction target, and highlights two critical but previously overlooked bottlenecks. Based on this analysis, we propose a remarkably simple and effective method, {\ourmethod}, that entails two strategies: 1) filtering the high-frequency components from the reconstruction target to de-emphasize the network's focus on texture-rich details and 2) adopting a conservative data transform strategy to alleviate the problem of missing foreground in MIM training. {\ourmethod} can be easily integrated into most existing pixel-based MIM approaches (\ie, using raw images as reconstruction target) with negligible additional computation. Without bells and whistles, our method consistently improves three MIM approaches, MAE, ConvMAE, and LSMAE, across various downstream tasks. We believe this effective plug-and-play method will serve as a strong baseline for self-supervised learning and provide insights for future improvements of the MIM framework. Code and models are available at \url{https://github.com/open-mmlab/mmselfsup/tree/dev-1.x/configs/selfsup/pixmim}.

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