Deep Learning networks have established themselves as providing state of art performance for semantic segmentation. These techniques are widely applied specifically to medical detection, segmentation and classification. The advent of the U-Net based architecture has become particularly popular for this application. In this paper we present the Dense Recurrent Residual Convolutional Neural Network(Dense R2U CNN) which is a synthesis of Recurrent CNN, Residual Network and Dense Convolutional Network based on the U-Net model architecture. The residual unit helps training deeper network, while the dense recurrent layers enhances feature propagation needed for segmentation. The proposed model tested on the benchmark Lung Lesion dataset showed better performance on segmentation tasks than its equivalent models.
翻译:深层学习网络已经建立起来,为语义分解提供最新性能,这些技术被广泛具体应用于医学检测、分解和分类。基于U-Net的架构的出现对于这一应用程序来说特别受欢迎。在本文件中,我们介绍了大量经常性残余革命神经网络(Dense R2U CNN),这是基于 U-Net 模型架构的经常性CNN、遗留网络和常态革命网络的合成。残余单位帮助培训更深的网络,而稠密的经常层则加强分解所需的特征传播。在基准肺 Lesion 数据集上测试的拟议模型显示分解任务的业绩优于其等效模型。