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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Efficient adaptive inference for deep convolutional neural networks using hierarchical early exits
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Efficient adaptive inference for deep convolutional neural networks using hierarchical early exits

机译:使用分层早期出口的深度卷积神经网络有效的自适应推断

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摘要

Early exits are capable of providing deep learning models with adaptive computational graphs that can readily adapt on-the -fly to the available resources. Despite their advantages, existing early exit methods suffer from many limitations which limit their performance, e.g., they ignore the information extracted from previous exit layers, they are unable to efficiently handle feature maps with large sizes, etc. To overcome these limitations we propose a Bag-of-Features (BoF)-based method that is capable of constructing efficient hierarchical early exit layers with minimal computational overhead, while also providing an adaptive inference method that allows for early stopping the inference process when the network is confident enough for its output, leading to significant performance benefits. To this end, the BoF model is extended and adapted to the needs of early exits by constructing additive shared histogram spaces that gradually refine the information extracted from the various layers of a network, in a hierarchical manner, while also employing a classification layer reuse strategy to further reduce the number of parameters needed per exit layer. Note that the proposed method is generic and can be readily combined with any neural network architecture. The effectiveness of the proposed method is demonstrated using five different image datasets, proving that early exits can be readily transformed into a practical tool, which can be effectively used in various real-world embedded applications. (C) 2020 Elsevier Ltd. All rights reserved.
机译:早期退出能够提供具有自适应计算图的深度学习模型,可以容易地将-Fly调整到可用资源。尽管他们的优势,现有的早期退出方法遭受了限制其性能的许多限制,例如,它们忽略了从先前退出层中提取的信息,它们无法有效地处理具有大尺寸等的特征映射等来克服我们提出的这些限制基于特征(BOF)的袋式方法,其能够构建具有最小计算开销的有效的分层早期出口层,同时还提供了一种自适应推理方法,允许在网络对其输出充满信时时提前停止推理过程,导致显着的性能效益。为此,BOF模型被扩展并适应早期退出的需要,通过构建逐渐改进从网络的各个层提取的信息,同时使用分类层重用策略为了进一步减少每个出口层所需的参数数量。注意,所提出的方法是通用的,可以随时与任何神经网络架构组合。使用五种不同的图像数据集来证明所提出的方法的有效性,证明早期的出口可以容易地转换为实用的工具,可以在各种真实嵌入式应用中有效地使用。 (c)2020 elestvier有限公司保留所有权利。

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