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Recurrent Iterative Gating Networks for Semantic Segmentation

机译:递归迭代门控网络的语义分割

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In this paper, we present an approach for Recurrent Iterative Gating called RIGNet. The core elements of RIGNet involve recurrent connections that control the flow of information in neural networks in a top-down manner, and different variants on the core structure are considered. The iterative nature of this mechanism allows for gating to spread in both spatial extent and feature space. This is revealed to be a powerful mechanism with broad compatibility with common existing networks. Analysis shows how gating interacts with different network characteristics, and we also show that more shallow networks with gating may be made to perform better than much deeper networks that do not include RIGNet modules.
机译:在本文中,我们提出了一种称为RIGNet的递归迭代门控方法。 RIGNet的核心元素涉及递归连接,这些连接以自上而下的方式控制神经网络中的信息流,并考虑了核心结构的不同变体。该机制的迭代性质允许门控在空间范围和特征空间中扩展。它被证明是一种强大的机制,与常见的现有网络具有广泛的兼容性。分析显示了选通如何与不同的网络特征相互作用,并且我们还表明,与不包含RIGNet模块的深层网络相比,具有选通功能的更浅层网络的性能可能更好。

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