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InfiNet: Fully convolutional networks for infant brain MRI segmentation

机译:InfiNet:用于婴儿脑MRI分割的全卷积网络

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We present a novel, parameter-efficient and practical fully convolutional neural network architecture, termed InfiNet, aimed at voxel-wise semantic segmentation of infant brain MRI images at iso-intense stage, which can be easily extended for other segmentation tasks involving multi-modalities. InfiNet consists of double encoder arms for T1 and T2 input scans that feed into a joint-decoder arm that terminates in the classification layer. The novelty of InfiNet lies in the manner in which the decoder upsamples lower resolution input feature map(s) from multiple encoder arms. Specifically, the pooled indices computed in the max-pooling layers of each of the encoder blocks are related to the corresponding decoder block to perform non-linear learning-free upsampling. The sparse maps are concatenated with intermediate encoder representations (skip connections) and convolved with trainable filters to produce dense feature maps. InfiNet is trained end-to-end to optimize for the Generalized Dice Loss, which is well-suited for high class imbalance. InfiNet achieves the whole-volume segmentation in under 50 seconds and we demonstrate competitive performance against multiple state-of-the art deep architectures and their multi-modal variants.
机译:我们提出了一种新颖的,参数有效的,实用的全卷积神经网络体系结构,称为InfiNet,旨在对等强度阶段的婴儿脑MRI图像进行体素语义分割,可以轻松地将其扩展为涉及多模态的其他分割任务。 InfiNet由用于T1和T2输入扫描的双编码器臂组成,这些输入臂馈入终止于分类层的联合解码器臂。 InfiNet的新颖之处在于,解码器对来自多个编码器臂的较低分辨率输入特征图进行升采样。具体地,在每个编码器块的最大池化层中计算的合并索引与对应的解码器块相关,以执行非线性免学习的上采样。稀疏图与中间编码器表示形式(跳过连接)串联在一起,并与可训练的滤波器进行卷积以生成密集的特征图。 InfiNet接受了端到端的培训,以针对通用骰子损失进行优化,这非常适合于高级不平衡情况。 InfiNet可以在50秒内实现整体分割,我们展示了与多种最新的深度架构及其多模式变体相比的竞争优势。

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