MINR: Implicit Neural Representations with Masked Image Modelling
Lee, Sua, Lee, Joonhun, Kang, Myungjoo
–arXiv.org Artificial Intelligence
Self-supervised learning methods like masked autoen-coders (MAE) have shown significant promise in learning robust feature representations, particularly in image reconstruction-based pretraining task. However, their performance is often strongly dependent on the masking strategies used during training and can degrade when applied to out-of-distribution data. T o address these limitations, we introduce the masked implicit neural representations (MINR) framework that synergizes implicit neural representations with masked image modeling. MINR learns a continuous function to represent images, enabling more robust and gen-eralizable reconstructions irrespective of masking strategies. Our experiments demonstrate that MINR not only outperforms MAE in in-domain scenarios but also in out-of-distribution settings, while reducing model complexity. The versatility of MINR extends to various self-supervised learning applications, confirming its utility as a robust and efficient alternative to existing frameworks.
arXiv.org Artificial Intelligence
Jul-31-2025