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首页> 外文期刊>PeerJ Computer Science >AresB-Net: accurate residual binarized neural networks using shortcut concatenation and shuffled grouped convolution
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AresB-Net: accurate residual binarized neural networks using shortcut concatenation and shuffled grouped convolution

机译:ARESB-NET:使用快捷级联和随机分组卷积的准确剩余二值化神经网络

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This article proposes a novel network model to achieve better accurate residual binarized convolutional neural networks (CNNs), denoted as AresB-Net. Even though residual CNNs enhance the classification accuracy of binarized neural networks with increasing feature resolution, the degraded classification accuracy is still the primary concern compared with real-valued residual CNNs. AresB-Net consists of novel basic blocks to amortize the severe error from the binarization, suggesting a well-balanced pyramid structure without downsampling convolution. In each basic block, the shortcut is added to the convolution output and then concatenated, and then the expanded channels are shuffled for the next grouped convolution. In the downsampling when stride &1, our model adopts only the max-pooling layer for generating low-cost shortcut. This structure facilitates the feature reuse from the previous layers, thus alleviating the error from the binarized convolution and increasing the classification accuracy with reduced computational costs and small weight storage requirements. Despite low hardware costs from the binarized computations, the proposed model achieves remarkable classification accuracies on the CIFAR and ImageNet datasets.
机译:本文提出了一种新颖的网络模型,以实现更好的准确剩余二值化卷积神经网络(CNNS),表示为ARESB网。尽管残留的CNNS增强了具有增加的特征分辨率的二值化神经网络的分类精度,但与实值残留的CNN相比,降级的分类精度仍然是主要关注点。 ARESB-NET由新颖的基本块组成,可以从二值化中摊销严重误差,这表明没有下采样卷积的良好平衡的金字塔结构。在每个基本块中,快捷方式被添加到卷积输出然后连接,然后将扩展通道换档,用于下一个分组的卷积。在步幅& 1,我们的模型仅采用最大池,用于产生低成本快捷键。该结构有助于从先前的层中重复使用功能重用,从而减轻了二值化卷积的错误,并提高了计算成本和较小的重量存储要求的分类精度。尽管二金属化计算硬件成本低,但所提出的模型在CIFAR和Imagenet数据集中实现了显着的分类精度。

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