4.7 Article

Fast inference in convolutional neural networks based on sequential three-way decisions

期刊

INFORMATION SCIENCES
卷 560, 期 -, 页码 370-385

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2021.01.068

关键词

Image recognition; Convolutional neural network; Sequential three-way decisions; Adaptive neural networks; Granular computing; Multiple testing

资金

  1. RSF (Russian Science Foundation) [207110010]
  2. National Research University Higher School of Economics (HSE) within the framework of Basic Research Program
  3. Russian Science Foundation [20-71-10010] Funding Source: Russian Science Foundation

向作者/读者索取更多资源

A novel image recognition algorithm based on sequential three-way decisions is introduced to speed up the inference in a convolutional neural network. This approach does not require a special training procedure for neural networks and can be used with arbitrary architectures, demonstrating a reduction in running time of up to 40% with a controlled decrease in accuracy when tested on several datasets and neural architectures.
A novel image recognition algorithm based on sequential three-way decisions is introduced to speed up the inference in a convolutional neural network. In contrast to the majority of existing studies, our approach does not require a special procedure to train a neural network, and thus it can be used with arbitrary architectures including pre trained convolutional nets. Each image is associated with a sequence of features extracted at different layers of the neural network. Features from earlier layers stand for coarse grained image representation. Fine-grained representations include embeddings from one of later layers. Confidence scores of classifiers representing the input image at each granularity level are computed in order to populate a set of unlikely classes with low confidence scores. The thresholds for these scores are chosen by using the step-up multiple testing procedure. The categories from this set are not considered at the next levels with finer granularity. The algorithm selecting the granularity levels and thresholds for each level is trained on a small sample. An experimental study for several datasets and neural architectures demonstrated that the proposed approach reduces the running time by up to 40% with a controllable decrease in accuracy. (c) 2021 Elsevier Inc. All rights reserved.

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