Principal Components of Neural Convolution Filters

Shota Fukuzaki, Masaaki Ikehara

研究成果: Article査読

1 被引用数 (Scopus)


Convolutions in neural networks are still essential on various vision tasks. To develop neural convolutions, this study focuses on Structured Receptive Field (SRF), representing a convolution filter as a linear combination of widely acting designed components. Although SRF can represent convolution filters with fewer components than the number of filter bins, N-Jet, the sole component system implementation, requires ten trainable parameters per filter to improve accuracy even for 3×3 convolutions. Hence, we aim to formulate a new component system for SRF that can represent valid filters with fewer components. Our component system named 'OtX' is based on the Principal Component Analysis of well-trained filter weights because the extracted components will also be principal for neural convolution filters. In addition to proposing the component system, we develop a component scaling method to defuse massive scale differences among the coefficients in a linear combination of OtX components. In the experimental section, we train image classification models on CIFAR-100 dataset under the hyperparameters tuned for the original models with the standard convolutions. For NFNet-F0 classifier, OtX with six components performs 0.5% better than the standard convolution, 3.1% better than N-Jet with six components, and only 0.1% worse than N-Jet with ten components. Besides, OtX with nine components provides stabler training than N-Jet, performing 0.5% better than the standard for NFNet-F0. OtX suits when replacing standard convolutions because OtX performs at least comparably against N-Jet with further parameter efficiency and training stability.

ジャーナルIEEE Access
出版ステータスPublished - 2022

ASJC Scopus subject areas

  • コンピュータ サイエンス(全般)
  • 材料科学(全般)
  • 工学(全般)
  • 電子工学および電気工学


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