Brain vessel image segmentation can be used as a promising biomarker for better prevention and treatment of different diseases. One successful approach is to consider the segmentation as an image-to-image translation task and perform a conditional Generative Adversarial Network (cGAN) to learn a transformation between two distributions. In this paper, we present a novel multi-view approach, MLP-GAN, which splits a 3D volumetric brain vessel image into three different dimensional 2D images (i.e., sagittal, coronal, axial) and then feed them into three different 2D cGANs. The proposed MLP-GAN not only alleviates the memory issue which exists in the original 3D neural networks but also retains 3D spatial information. Specifically, we utilize U-Net as the backbone for our generator and redesign the pattern of skip connection integrated with the MLP-Mixer which has attracted lots of attention recently. Our model obtains the ability to capture cross-patch information to learn global information with the MLP-Mixer. Extensive experiments are performed on the public brain vessel dataset that show our MLP-GAN outperforms other state-of-the-art methods. We release our code at https://github.com/bxie9/MLP-GAN
翻译:脑容器图像分解可以作为一种有希望的生物标志,用于更好地预防和治疗不同疾病。一个成功的办法是将分解视为图像到图像的翻译任务,并运行一个有条件的基因反转网络(cGAN)以学习两种分布之间的转换。在本文中,我们展示了一种新型的多视图方法,即MLP-GAN,它将3D体积脑容器图像分割成三种不同的二维D图像(即,平流、直线、轴线、轴),然后将其反馈到三种不同的 2D CDAN 中。提议的 MLP-GAN 不仅缓解了原始的3D神经网络中存在的记忆问题,而且还保留了3D空间信息。具体地说,我们使用U-Net作为我们的发电机主干线,并重新设计了与MLP-Mixer的连接模式,这最近引起了人们的极大关注。我们的模型获得了利用交叉匹配信息与MLP-Mixer/Mixer进行学习全球信息的能力。MLP-Mexub.Meroal实验,我们在公共数据库中展示了我们MAN格式的其他数据。