It has been witnessed that masked image modeling (MIM) has shown a huge potential in self-supervised learning in the past year. Benefiting from the universal backbone vision transformer, MIM learns self-supervised visual representations through masking a part of patches of the image while attempting to recover the missing pixels. Most previous works mask patches of the image randomly, which underutilizes the semantic information that is beneficial to visual representation learning. On the other hand, due to the large size of the backbone, most previous works have to spend much time on pre-training. In this paper, we propose \textbf{Attention-driven Masking and Throwing Strategy} (AMT), which could solve both problems above. We first leverage the self-attention mechanism to obtain the semantic information of the image during the training process automatically without using any supervised methods. Masking strategy can be guided by that information to mask areas selectively, which is helpful for representation learning. Moreover, a redundant patch throwing strategy is proposed, which makes learning more efficient. As a plug-and-play module for masked image modeling, AMT improves the linear probing accuracy of MAE by $2.9\% \sim 5.9\%$ on CIFAR-10/100, STL-10, Tiny ImageNet, and ImageNet-1K, and obtains an improved performance with respect to fine-tuning accuracy of MAE and SimMIM. Moreover, this design also achieves superior performance on downstream detection and segmentation tasks. Code is available at https://github.com/guijiejie/AMT.
翻译:在过去一年里,蒙面图像建模(MIM)在自我监督学习方面显示出巨大的潜力。MIM从通用骨干视觉变压器中受益,通过遮盖图像部分部分补丁来学习自我监督的视觉表现,同时试图恢复缺失的像素。大多数以前的工作掩面图像部分是随机的,这没有充分利用有助于视觉演示学习的语义信息。另一方面,由于骨干体大,大多数以前的工作不得不花很多时间在培训前。在本文中,我们提议通过掩面遮住图像部分来学习自我监督的视觉表现。我们首先利用自我保护机制在培训过程中自动获取图像的语义信息,而没有使用任何监督方法。遮面战略可以用这些信息来有选择地遮蔽区域,这有利于代表学习。此外,还提议了多余的补面施压战略,这样可以提高学习效率。作为Sterfbbb-and-Netformal MWMMMDA 和IM-SIMA IM-SIMA 的高级和SIMA-SIM-SIM-SIM-SIM-SIM-SIM-SIML IML IML 的升级模块,这是SIM-SIM-SIM-SIM-SIM-SIM-SIM-RIS-SIM-SIM-SIM-R IMDAR IMD-SIM-SIM-S-S-S-S-S-S-S-S-SIM-S-S-S-SL IM-SIMDAR IM-SIML IML IML IML IML IML IML 的升级的升级模块的升级的升级模块的升级模块的升级模块的模板模块模块和升级模块和升级模块的模板的模块的模块的模块的模块和升级模块的模块和升级模块和升级模块和升级模块和升级模块。