Siamese networks are widely used for remote sensing change detection tasks. A vanilla siamese network has two identical feature extraction branches which share weights, these two branches work independently and the feature maps are not fused until about to be sent to a decoder head. However we find that it is critical to exchange information between two feature extraction branches at early stage for change detection task. In this work we present Mutual-Attention Siamese Network (MASNet), a general siamese network with mutual-attention plug-in, so to exchange information between the two feature extraction branches. We show that our modification improve the performance of siamese networks on multi change detection datasets, and it works for both convolutional neural network and visual transformer.
翻译:亚马逊网络被广泛用于遥感变化探测任务。 香草比亚网有两个相同的特征提取分支,它们共享重量,这两个分支独立运作,地貌图在即将被发送到解码器头之前没有连接。 然而,我们发现,两个特征提取分支在早期必须交流信息,以便进行变化探测任务。 在这项工作中,我们介绍了一个带有相互注意插座的普通赛亚马斯网络(MASNet ), 以在两个特征提取分支之间交流信息。 我们表明,我们所作的修改改善了亚马逊网络在多变探测数据集上的性能,并且它既适用于卷发神经网络,也适用于视觉变异器。