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The One Hundred Layers Tiramisu: Fully Convolutional DenseNets for Semantic Segmentation

机译:一百层Tiramisu:用于语义分割的完全卷积的暗示

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State-of-the-art approaches for semantic image segmentation are built on Convolutional Neural Networks (CNNs). The typical segmentation architecture is composed of (a) a downsampling path responsible for extracting coarse semantic features, followed by (b) an upsampling path trained to recover the input image resolution at the output of the model and, optionally, (c) a post-processing module (e.g. Conditional Random Fields) to refine the model predictions. Recently, a new CNN architecture, Densely Connected Convolutional Networks (DenseNets), has shown excellent results on image classification tasks. The idea of DenseNets is based on the observation that if each layer is directly connected to every other layer in a feed-forward fashion then the network will be more accurate and easier to train. In this paper, we extend DenseNets to deal with the problem of semantic segmentation. We achieve state-of-the-art results on urban scene benchmark datasets such as CamVid and Gatech, without any further post-processing module nor pretraining. Moreover, due to smart construction of the model, our approach has much less parameters than currently published best entries for these datasets. Code to reproduce the experiments is publicly available here: https://github.com/SimJeg/FC-DenseNet.
机译:在卷积神经网络(CNNS)上建立了语义图像分割的最先进方法。典型的分割架构由(a)组成(a)负责提取粗小语义特征的下采样路径,其次是(b)训练的上采样路径,以在模型的输出处恢复输入图像分辨率,并且可选地,(c)柱 - 处理模块(例如有条件的随机字段)以改进模型预测。最近,新的CNN架构,密集连接的卷积网络(Densenets),在图像分类任务上显示出优异的结果。 Densenets的想法基于观察结果:如果每个层以前馈方式直接连接到每隔一层,则网络将更加准确,更容易训练。在本文中,我们延长了Densenets来处理语义分割问题。我们在Camvid和Gatech等城市场景基准数据集上实现最先进的结果,没有任何进一步的后处理模块,也没有预先磨损。此外,由于模型的智能构造,我们的方法比目前已发布这些数据集的最佳条目的参数少得多。重现实验的代码在此处提供:https://github.com/simjeg/fc-densenet。

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