In recent years, deep convolution neural networks (DCNNs) have achieved great prospects in coronary artery vessel segmentation. However, it is difficult to deploy complicated models in clinical scenarios since high-performance approaches have excessive parameters and high computation costs. To tackle this problem, we propose \textbf{LightVessel}, a Similarity Knowledge Distillation Framework, for lightweight coronary artery vessel segmentation. Primarily, we propose a Feature-wise Similarity Distillation (FSD) module for semantic-shift modeling. Specifically, we calculate the feature similarity between the symmetric layers from the encoder and decoder. Then the similarity is transferred as knowledge from a cumbersome teacher network to a non-trained lightweight student network. Meanwhile, for encouraging the student model to learn more pixel-wise semantic information, we introduce the Adversarial Similarity Distillation (ASD) module. Concretely, the ASD module aims to construct the spatial adversarial correlation between the annotation and prediction from the teacher and student models, respectively. Through the ASD module, the student model obtains fined-grained subtle edge segmented results of the coronary artery vessel. Extensive experiments conducted on Clinical Coronary Artery Vessel Dataset demonstrate that LightVessel outperforms various knowledge distillation counterparts.
翻译:近些年来,深卷动神经网络(DCNNS)在冠心动动脉断裂方面取得了巨大前景,然而,很难在临床假设中部署复杂的模型,因为高性能方法具有过多的参数和高计算成本。为了解决这个问题,我们提议了“类似知识蒸馏框架”,用于轻量的冠心动动动动脉分割。我们主要提议了用于语义变换位模型的简单和相似性蒸馏(FSD)模块。具体地说,我们计算了与编码器和分解器相类似的对称层的特征。然后,类似性作为知识从一个繁琐的教师网络转移到一个未经训练的轻质学生网络。同时,为了鼓励学生模型学习更多的离子线性动动动动动动动脉动动动动动动动动动动动动动动脉分离(ASD)模块。具体地说,ASDDSD模块旨在构建由精细的轮动动动脉动动动动动动动动动脉结构模型和学生模型预测之间的空间对等关系。通过ASDDSD模块,分别从精化的精化轮动动变变变变变变变动的校正的校制的校制的校正结构实验,通过SD-C-Cyalalalal-cal制的模制的模制成,通过ADM制的模制成的模制成的模制的模制的模制的模制的模模制的模制成,分别取取取取取取取取取取。