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Pooling-Free Fully Convolutional Networks with Dense Skip Connections for Semantic Segmentation, with Application to Brain Tumor Segmentation

机译:可汇集完全卷积的网络,具有致密的跳过连接,用于语义分割,应用于脑肿瘤细分

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Segmentation of medical images requires multi-scale information, combining local boundary detection with global context. State-of-the-art convolutional neural network (CNN) architectures for semantic segmentation are often composed of a downsampling path which computes features at multiple scales, followed by an upsampling path, required to recover those features at the same scale as the input image. Skip connections allow features discovered in the downward path to be integrated in the upward path. The downsampling mechanism is typically a pooling operation. However, pooling was introduced in CNNs to enable translation invariance, which is not desirable in segmentation tasks. For this reason, we propose an architecture, based on the recently proposed Densenet, for semantic segmentation, in which pooling has been replaced with dilated convolutions. We also present a variant approach, used in the 2017 BRATS challenge, in which a cascade of densely connected nets is used to first exclude non-brain tissue, and then segment tumor structures. We present results on the validation dataset of the Multimodal Brain Tumor Segmentation Challenge 2017.
机译:医学图像的分割需要多尺度信息,将局部边界检测与全局背景相结合。用于语义分割的最先进的卷积神经网络(CNN)架构通常由下采样路径组成,该路径由多个尺度计算特征,然后是ups采样路径,要求以与输入图像相同的比例恢复这些特征。跳过连接允许在向上路径中发现的功能集成在向上路径中。下采样机制通常是池化操作。然而,在CNN中引入了汇集,以实现平移不变性,这在分割任务中是不可取的。因此,我们提出了一种基于最近提出的DENSENET进行语义分割的架构,其中汇集已被扩张的卷曲取代。我们还提出了一种在2017年BRATS挑战中使用的变体方法,其中级联连接的网级联用于首先排除非脑组织,然后分段肿瘤结构。我们在2017年验证数据集的验证数据集上呈现结果。

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