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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Switchable Normalization for Learning-to-Normalize Deep Representation
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Switchable Normalization for Learning-to-Normalize Deep Representation

机译:用于学习 - 归一化深度表示的可切换标准化

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摘要

We address a learning-to-normalize problem by proposing Switchable Normalization (SN), which learns to select different normalizers for different normalization layers of a deep neural network. SN employs three distinct scopes to compute statistics (means and variances) including a channel, a layer, and a minibatch. SN switches between them by learning their importance weights in an end-to-end manner. It has several good properties. First, it adapts to various network architectures and tasks (see Fig. 1 ). Second, it is robust to a wide range of batch sizes, maintaining high performance even when small minibatch is presented (e.g., 2 images/GPU). Third, SN does not have sensitive hyper-parameter, unlike group normalization that searches the number of groups as a hyper-parameter. Without bells and whistles, SN outperforms its counterparts on various challenging benchmarks, such as ImageNet, COCO, CityScapes, ADE20K, MegaFace and Kinetics. Analyses of SN are also presented to answer the following three questions: (a) Is it useful to allow each normalization layer to select its own normalizer? (b) What impacts the choices of normalizers? (c) Do different tasks and datasets prefer different normalizers? We hope SN will help ease the usage and understand the normalization techniques in deep learning. The code of SN has been released at https://github.com/switchablenorms.
机译:通过提出可切换的归一化(SN)来解决学习 - 归一化问题,该问题学习为深神经网络的不同归一化层选择不同的癌症。 SN采用三个不同的范围来计算包括通道,层和小纤维的统计信息(手段和差异)。 SN通过以端到端的方式学习其重要性重量之间的SN在它们之间切换。它有几个好的物业。首先,它适应各种网络架构和任务(参见图1)。其次,它对于各种批量尺寸是强大的,即使在呈现小型匹配时,也保持高性能(例如,2图像/ GPU)。第三,SN没有敏感的超参数,与搜索组数量的小组归一化,作为超参数。没有钟声和口哨,SN在各种具有挑战性的基准上表现出各种具有挑战性的基准,例如想象成,可可,城市景观,Ade20k,Megaface和动力学。还提出了SN的分析来回答以下三个问题:(a)允许每个归一化层选择其自定义程序是有用的吗? (b)影响癌症的选择是什么? (c)做不同的任务和数据集更喜欢不同的癌症?我们希望SN将有助于缓解使用并理解深度学习中的正常化技术。 SN的代码已在https://github.com/switch bodmorms释放。

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