JSAI2024

Presentation information

Organized Session

Organized Session » OS-13

[3R5-OS-13c] OS-13

Thu. May 30, 2024 3:30 PM - 4:50 PM Room R (Room 51)

オーガナイザ:酒井 元気(日本大学)、岡田 将吾(北陸先端科学技術大学院大学)、湯浅 将英(湘南工科大学)、近藤 一晃(京都大学)、下西 慶(京都大学)

3:30 PM - 3:50 PM

[3R5-OS-13c-01] Automatic dataset generation and recognizer training for recognition of subtle facial expression changes for smiling faces

〇Kei Shimonishi1, Tsuyoshi Inoue1, Kazuaki Kondo1, Hirotada Ueda1, Yuichi Nakamura1 (1. Kyoto University)

Keywords:Facial expression recognition, Siamese Network, Automation

Recognizing the intensity of facial expressions in daily life is crucial to estimating the individual's Quality of Life (QOL). To recognize ambiguous expressions, a two-input facial expression recognizer specialized for individuals has been proposed in our laboratory. Although this recognizer can accurately recognize facial expressions based on comparisons, it has the limitation of requiring the manual provision of supervised data for each individual. The goal of this study is to automatically generate datasets required for training the two-input facial expression recognizer for smiles from videos that capture the facial changes of an individual. We propose a method that utilizes a conventional facial expression recognizer to extract data on explicit expression differences. Additionally, we introduce a three-input facial expression change recognizer to extract facial images with subtle expression differences. Experimental results showed that our proposed framework could successfully generate a dataset for training the two-input facial expression recognizer.

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