Convolutional neural networks (CNNs) have been the de facto standard in a diverse set of computer vision tasks for many years. Especially, deep neural networks based on seminal architectures such as U-shaped models with skip-connections or atrous convolution with pyramid pooling have been tailored to a wide range of medical image analysis tasks. The main advantage of such architectures is that they are prone to detaining versatile local features. However, as a general consensus, CNNs fail to capture long-range dependencies and spatial correlations due to the intrinsic property of confined receptive field size of convolution operations. Alternatively, Transformer, profiting from global information modelling that stems from the self-attention mechanism, has recently attained remarkable performance in natural language processing and computer vision. Nevertheless, previous studies prove that both local and global features are critical for a deep model in dense prediction, such as segmenting complicated structures with disparate shapes and configurations. To this end, this paper proposes TransDeepLab, a novel DeepLab-like pure Transformer for medical image segmentation. Specifically, we exploit hierarchical Swin-Transformer with shifted windows to extend the DeepLabv3 and model the Atrous Spatial Pyramid Pooling (ASPP) module. A thorough search of the relevant literature yielded that we are the first to model the seminal DeepLab model with a pure Transformer-based model. Extensive experiments on various medical image segmentation tasks verify that our approach performs superior or on par with most contemporary works on an amalgamation of Vision Transformer and CNN-based methods, along with a significant reduction of model complexity. The codes and trained models are publicly available at https://github.com/rezazad68/transdeeplab
翻译:多年来,在一系列多种多样的计算机视觉任务中,电传神经网络(CNNs)一直是事实上的一套不同的计算机视觉任务。特别是,基于诸如U型模型和跳接连接或金字塔集合的巨变等开创性结构的深层神经网络已经适应一系列广泛的医学图像分析任务。这些结构的主要优点是,它们容易分散多种功能。然而,作为普遍共识,CNNs由于在有限空间空间规模的组合操作中,其内在特性有限,无法捕捉远程依赖性和空间相关性。换而来,从从大量自留机制产生的全球信息建模中获益的变异器,最近在自然语言模型处理和计算机视野中取得了显著的性能。然而,以往的研究证明,本地和全球的特征对于一个深度预测模型至关重要,例如将不同形状和配置的复杂结构分解。为此,本文提出了基于TREDISDIepLab的模型和类似精度变现的精度变异变异模型,用于医疗图像分割。具体地,我们用最深层次的Swewin-traveriction 和最深层级的图像模型,在深层的变异变异的图像中,在AVALLAVL3和最深层的模型中, 和最深层的模型中,这是的模型搜索的模型搜索的模型搜索的模型搜索的模型搜索。