高效多尺度特征生成自适应网络

Gwanghan Lee, Minhan Kim, Simon S. Woo
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摘要

近年来,在推理时间内动态调整模型复杂度的早期退出网络已经取得了显著的性能和神经网络的效率,可用于各种应用。到目前为止,许多研究人员都集中在减少输入样本或模型架构的冗余上。然而,他们未能解决早期分类器在缺乏高级特征信息的情况下进行预测的性能下降问题。因此,早期分类器的性能下降对共享主干的整个网络性能产生了毁灭性的影响。因此,本文提出了一种高效的多尺度特征生成自适应网络(EMGNet),该网络不仅减少了体系结构的冗余,而且还生成了多尺度特征,从而提高了早退出网络的性能。我们的方法通过在卷积核中心共享权值,使得多尺度特征生成非常高效。此外,我们的门控网络有效地学习自动确定网络中不同位置的每个卷积层所需的合适的多尺度特征比。我们证明了我们提出的模型在CIFAR10、CIFAR100和ImageNet数据集上优于最先进的自适应网络。实现代码可从https://github.com/lee-gwang/EMGNet获得
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Efficient Multi-Scale Feature Generation Adaptive Network
Recently, an early exit network, which dynamically adjusts the model complexity during inference time, has achieved remarkable performance and neural network efficiency to be used for various applications. So far, many researchers have been focusing on reducing the redundancy of input sample or model architecture. However, they were unsuccessful at resolving the performance drop of early classifiers that make predictions with insufficient high-level feature information. Consequently, the performance degradation of early classifiers had a devastating effect on the entire network performance sharing the backbone. Thus, in this paper, we propose an Efficient Multi-Scale Feature Generation Adaptive Network (EMGNet), which not only reduced the redundancy of the architecture but also generates multi-scale features to improve the performance of the early exit network. Our approach renders multi-scale feature generation highly efficient through sharing weights in the center of the convolution kernel. Also, our gating network effectively learns to automatically determine the proper multi-scale feature ratio required for each convolution layer in different locations of the network. We demonstrate that our proposed model outperforms the state-of-the-art adaptive networks on CIFAR10, CIFAR100, and ImageNet datasets. The implementation code is available at https://github.com/lee-gwang/EMGNet
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