Retinal vessel segmentation is a vital step for the diagnosis of many early eye-related diseases. In this work, we propose a new deep learning model, namely Channel Attention Residual U-Net (CAR-U-Net), to accurately segment retinal vascular and non-vascular pixels. In this model, the channel attention mechanism is introduced into Residual Block and a Channel Attention Residual Block (CARB) is proposed to enhance the discriminative ability of the network by considering the interdependence between the feature channels. Moreover, to prevent the convolutional networks from overfitting, a Structured Dropout Residual Block (SDRB) is proposed, consisting of pre-activation residual block and DropBlock. The results show that our proposed CAR-U-Net has reached the state-of-the-art performance on two publicly available retinal vessel datasets: DRIVE and CHASE DB1.
翻译:在这项工作中,我们提出了一个新的深层次学习模式,即CAR-U-Net(CAR-U-Net),以准确分流视网膜血管和无血管象素;在这一模式中,将频道注意力机制引入残余区块,并提议通过考虑地物渠道之间的相互依存关系,加强网络的歧视性能力;此外,为防止革命网络过度装配,还提出了结构化的抛弃区块(SDRB),包括启动前残留区块和抛出区块;结果显示,我们提议的CAR-U-Net在两个公开可公开获取的对流容器数据集:DRIVE和CHASE DB1上达到了最先进的性能。