Recently, many methods based on hand-designed convolutional neural networks (CNNs) have achieved promising results in automatic retinal vessel segmentation. However, these CNNs remain constrained in capturing retinal vessels in complex fundus images. To improve their segmentation performance, these CNNs tend to have many parameters, which may lead to overfitting and high computational complexity. Moreover, the manual design of competitive CNNs is time-consuming and requires extensive empirical knowledge. Herein, a novel automated design method, called Genetic U-Net, is proposed to generate a U-shaped CNN that can achieve better retinal vessel segmentation but with fewer architecture-based parameters, thereby addressing the above issues. First, we devised a condensed but flexible search space based on a U-shaped encoder-decoder. Then, we used an improved genetic algorithm to identify better-performing architectures in the search space and investigated the possibility of finding a superior network architecture with fewer parameters. The experimental results show that the architecture obtained using the proposed method offered a superior performance with less than 1% of the number of the original U-Net parameters in particular and with significantly fewer parameters than other state-of-the-art models. Furthermore, through in-depth investigation of the experimental results, several effective operations and patterns of networks to generate superior retinal vessel segmentations were identified.
翻译:最近,许多基于手工设计的连旋神经网络(CNNs)的许多方法在自动视视网膜船分解方面取得了令人乐观的成果。然而,这些CNN在捕捉复杂的Fundus图像中的视网膜船只方面仍然受到限制。为了改进这些视网膜的分解性能,这些CNN往往有许多参数,这可能导致超配和高计算复杂性。此外,竞争性CNN的手工设计耗费时间,需要广泛的经验知识。在这里,一个叫作Geround U-Net的新型自动化设计方法,旨在产生一个U型型CNN,可以实现更好的视网分解,但建筑参数较少,从而解决上述问题。首先,我们设计了一个以U型编码编码解码器为根据的压缩而灵活的搜索空间。然后,我们用改进的遗传算法来查明搜索空间中较好的架构,并调查找到参数较少的高级网络结构的可能性。实验结果表明,使用拟议方法产生的U型号CNN的功能优于特定的U网络参数的1%以上,而通过若干高级的实验型号网络生成的结果则大大少于其他的高级的。