The DCELANM-Net structure, which this article offers, is a model that ingeniously combines a Dual Channel Efficient Layer Aggregation Network (DCELAN) and a Micro Masked Autoencoder (Micro-MAE). On the one hand, for the DCELAN, the features are more effectively fitted by deepening the network structure; the deeper network can successfully learn and fuse the features, which can more accurately locate the local feature information; and the utilization of each layer of channels is more effectively improved by widening the network structure and residual connections. We adopted Micro-MAE as the learner of the model. In addition to being straightforward in its methodology, it also offers a self-supervised learning method, which has the benefit of being incredibly scaleable for the model.
翻译:本文提出了一种名为DCELANM-Net的模型,它巧妙地将双通道高效层聚合网络(DCELAN)和微掩蔽自编码器(Micro-MAE)相结合。一方面,对于DCELAN,通过加深网络结构可以更有效地拟合特征;更深的网络能够成功学习和融合特征,从而更准确地定位局部特征信息;通过扩大网络结构和残差连接,更有效地利用每个层的通道。我们采用Micro-MAE作为模型的学习器。除了方法简单之外,它还提供了一种自监督学习方法,这有助于模型具有非常高的可扩展性。