Deep learning algorithms have achieved remarkable results in medical image segmentation in recent years. These networks are unable to handle with image boundaries and details with enormous parameters, resulting in poor segmentation results. To address the issue, we develop atrous spatial pyramid pooling (ASPP) and combine it with the Squeeze-and-Excitation block (SE block), as well as present the PS module, which employs a broader and multi-scale receptive field at the network's bottom to obtain more detailed semantic information. We also propose the Local Guided block (LG block) and also its combination with the SE block to form the LS block, which can obtain more abundant local features in the feature map, so that more edge information can be retained in each down sampling process, thereby improving the performance of boundary segmentation. We propose PLU-Net and integrate our PS module and LS block into U-Net. We put our PLU-Net to the test on three benchmark datasets, and the results show that by fewer parameters and FLOPs, it outperforms on medical semantic segmentation tasks.
翻译:近年来,深层学习算法在医学图像分割方面取得了显著成果。 这些网络无法以巨大的参数处理图像边界和细节,导致分解结果差。 为了解决这个问题,我们开发了极强的空间金字塔集合(ASPP),并将其与Squeeze-Exucation 区块(SE区块)合并,并展示了PS模块,该模块在网络底部使用一个更广泛和多尺度的可接受域块,以获取更详细的语义信息。我们还提议使用本地向导区块(LG区块)及其与SE区块的组合组成LS区块,这块块块块块可以在地貌图中获取更多本地特征,这样就可以在每次下方取样过程中保留更多的边际信息,从而改进边界分割的性能。我们提议了PLU网,并将我们的PS模块和LS区块纳入U-Net。 我们用我们的PLU网测试了三个基准数据集,结果显示,参数和FLOPs以较少的参数和FLOPs超越了医学的分块任务。