Combinatorial explosion problem caused by dual inputs presents a critical challenge in Deformable Medical Image Registration (DMIR). Since DMIR processes two images simultaneously as input, the combination relationships between features has grown exponentially, ultimately the model considers more interfering features during the feature modeling process. Introducing dynamics in the receptive fields and weights of the network enable the model to eliminate the interfering features combination and model the potential feature combination relationships. In this paper, we propose the Dynamic Stream Network (DySNet), which enables the receptive fields and weights to be dynamically adjusted. This ultimately enables the model to ignore interfering feature combinations and model the potential feature relationships. With two key innovations: 1) Adaptive Stream Basin (AdSB) module dynamically adjusts the shape of the receptive field, thereby enabling the model to focus on the feature relationships with greater correlation. 2) Dynamic Stream Attention (DySA) mechanism generates dynamic weights to search for more valuable feature relationships. Extensive experiments have shown that DySNet consistently outperforms the most advanced DMIR methods, highlighting its outstanding generalization ability. Our code will be released on the website: https://github.com/ShaochenBi/DySNet.
翻译:双输入导致的组合爆炸问题在可变形医学图像配准中构成了关键挑战。由于DMIR同时处理两幅图像作为输入,特征间的组合关系呈指数级增长,最终导致模型在特征建模过程中考虑更多干扰性特征组合。在网络感受野和权重中引入动态性,使模型能够消除干扰性特征组合并建模潜在的特征组合关系。本文提出动态流网络,该网络能够动态调整感受野和权重,最终使模型能够忽略干扰性特征组合并建模潜在的特征关系。其核心创新包括:1)自适应流池模块动态调整感受野形状,使模型能够聚焦于相关性更强的特征关系;2)动态流注意力机制通过生成动态权重来搜寻更具价值的特征关系。大量实验表明,DySNet在各项指标上持续超越最先进的DMIR方法,彰显了其卓越的泛化能力。我们的代码将在以下网址开源:https://github.com/ShaochenBi/DySNet。