JSAI2022

Presentation information

General Session

General Session » GS-2 Machine learning

[3P3-GS-2] Machine learning: applications

Thu. Jun 16, 2022 1:30 PM - 3:10 PM Room P (Online P)

座長:佐藤 佳州(パナソニックホールディングス)[現地]

1:50 PM - 2:10 PM

[3P3-GS-2-02] A Study on Deep Correlation Features for Retrieving Anime-style Artists

〇Tatsuya Masuko1, Tomofumi Matsuzawa1 (1. Tokyo University of Science)

[[Online]]

Keywords:deep correlation features, anime-style artists, Attention

Recently, statistics-based methods on CNN features is employed for representing rich style information. One of these methods is Deep Correlation Features(DCF), the Gram matrix of vectorized feature maps, shown to be of benefit for paintings or affective imagery recognition. Calculating the inner product between two input feature maps, Gram matrix can be regarded as a sort of Attention mechanism, which adaptively changes the other one. To our knowledge, this is the first paper which reveals Deep Correlation Features in the aspect of Attention mechanism. Inspired by the idea of sparsification on Query-Key Attention, we propose Sparse Gram Matrix Module(SGMM). Our network is composed of two parts, multi-head SGMM and inter-layer concatenation. A network performance evaluation on classifying and retrieving anime-style artists showed superiority in closed-set accuracy metrics. Several characteristics of SGMM is discussed, which SGMM has similar behavior as Attention mechanism.

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