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Multi-Scale Convolution Aggregation and Stochastic Feature Reuse for DenseNets

机译:DenseNets的多尺度卷积聚合和随机特征重用

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Recently, Convolution Neural Networks (CNNs) obtained huge success in numerous vision tasks. In particular, DenseNets have demonstrated that feature reuse via dense skip connections can effectively alleviate the difficulty of training very deep networks and that reusing features generated by the initial layers in all subsequent layers has strong impact on performance. To feed even richer information into the network, a novel adaptive Multi-scale Convolution Aggregation module is presented in this paper. Composed of layers for multi-scale convolutions, trainable cross-scale aggregation, maxout, and concatenation, this module is highly non-linear and can boost the accuracy of DenseNet while using much fewer parameters. In addition, due to high model complexity, the network with extremely dense feature reuse is prone to overfitting. To address this problem, a regularization method named Stochastic Feature Reuse is also presented. Through randomly dropping a set of feature maps to be reused for each mini-batch during the training phase, this regularization method reduces training costs and prevents co-adaptation. Experimental results on CIFAR-10, CIFAR-100 and SVHN benchmarks demonstrated the effectiveness of the proposed methods.
机译:最近,卷积神经网络(CNN)在众多视觉任务中获得了巨大的成功。特别是,DenseNets已经证明,通过密集的跳过连接来重用功能部件可以有效地缓解训练深度网络的难度,并且重用所有后续层中的初始层所生成的功能部件会对性能产生重大影响。为了将更丰富的信息馈入网络,本文提出了一种新颖的自适应多尺度卷积聚合模块。该模块由用于多尺度卷积,可训练的跨尺度聚合,maxout和级联的层组成,是高度非线性的,可以在使用更少参数的情况下提高DenseNet的准确性。此外,由于模型复杂性高,具有极高特征复用能力的网络易于过度拟合。为了解决这个问题,还提出了一种名为“随机特征重用”的正则化方法。通过在训练阶段随机丢弃一组特征图以供每个微型批处理重复使用,这种正则化方法可降低训练成本并防止共同适应。在CIFAR-10,CIFAR-100和SVHN基准上的实验结果证明了所提出方法的有效性。

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