IEEE/ACM Trans Comput Biol Bioinform. 2022 Mar-Apr;19(2):1225-1234. doi: 10.1109/TCBB.2020.3039358. Epub 2022 Apr 1.
Many modern neural network architectures with over parameterized regime have been used for identification of skin cancer. Recent work showed that network, where the hidden units are polynomially smaller in size, showed better performance than overparameterized models. Hence, in this paper, we present multistage unit-vise deep dense residual network with transition and additional supervision blocks that enforces the shorter connections resulting in better feature representation. Unlike ResNet, We divided the network into several stages, and each stage consists of several dense connected residual units that support residual learning with dense connectivity and limited the skip connectivity. Thus, each stage can consider the features from its earlier layers locally as well as less complicated in comparison to its counter network. Evaluation results on ISIC-2018 challenge consisting of 10,015 training images show considerable improvement over other approaches achieving 98.05 percent accuracy and improving on the best results achieved in comparison to state of the art methods. The code of Unit-vise network is publicly available..
许多具有超参数化模式的现代神经网络架构已被用于皮肤癌的识别。最近的工作表明,与超参数化模型相比,隐藏单元在大小上呈多项式减小的网络表现出更好的性能。因此,在本文中,我们提出了具有过渡和附加监督块的多阶段单元式深度稠密残差网络,强制使用较短的连接,从而得到更好的特征表示。与 ResNet 不同,我们将网络分为几个阶段,每个阶段由几个密集连接的残差单元组成,这些单元支持密集连接的残差学习,并限制了跳过连接。因此,每个阶段都可以局部考虑来自其较早层的特征,并且与对应网络相比,特征更为简单。在包含 10015 个训练图像的 ISIC-2018 挑战赛上的评估结果表明,与其他方法相比,该方法取得了相当大的改进,达到了 98.05%的准确率,并优于最先进方法的最佳结果。单元式网络的代码是公开可用的。