著者
岡田 将吾 松儀 良広 中野 有紀子 林 佑樹 黄 宏軒 高瀬 裕 新田 克己
出版者
一般社団法人 人工知能学会
雑誌
人工知能学会論文誌 (ISSN:13460714)
巻号頁・発行日
vol.31, no.6, pp.AI30-E_1-12, 2016-11-01 (Released:2016-11-02)
参考文献数
22
被引用文献数
6

This paper focuses on developing a model for estimating communication skills of each participant in a group from multimodal (verbal and nonverbal) features. For this purpose, we use a multimodal group meeting corpus including audio signal data and head motion sensor data of participants observed in 30 group meeting sessions. The corpus also includes the communication skills of each participant, which is assessed by 21 external observers with the experience of human resource management. We extracted various kinds of features such as spoken utterances, acoustic features, speaking turns and the amount of head motion to estimate the communication skills. First, we created a regression model to infer the level of communication skills from these features using support vector regression to evaluate the estimation accuracy of the communication skills. Second, we created a binary (high or low) classification model using support vector machine. Experiment results show that the multimodal model achieved 0.62 in R2 as the regression accuracy of overall skill, and also achieved 0.93 as the classification accuracy. This paper reports effective features in predicting the level of communication skill and shows that these features are also useful in characterizing the difference between the participants who have high level communication skills and those who do not.

言及状況

外部データベース (DOI)

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@vxf9alMy6sn74g4 @pcXjG5Z12T21vMU @SpringM20 @Usa_Rabbit4180 @Cadet_yokohama @2himepins @gm1579382132 @MCHIGHLOW1 @jerijeri77 @sfc_Taieki1968 @ayumi_seiji @5hiro17 @CtWQUkqlk8yQw11 @yuinosuke999 @hiT90715944 @CiXcuryyDOG5NXq @hSQehYkvFCPZaMh @QVhmYppzXBxSg3B @pxAw5ZAJ0URhZxO @ohbhysPsQ6W3eU0 @okeikonojikann @SakuraKasumi311 @edeityan @bot68164037 @hannah_003_009 @RABDe500 @nago_yuyuyu 会話のコミュニケーション、この場合の「の」は「における」の意味だと、普通はわかりますが
@pcXjG5Z12T21vMU @Usa_Rabbit4180 @Cadet_yokohama @vxf9alMy6sn74g4 @gm1579382132 @2himepins @MCHIGHLOW1 @jerijeri77 @sfc_Taieki1968 @ayumi_seiji @5hiro17 @CtWQUkqlk8yQw11 @yuinosuke999 @hiT90715944 @CiXcuryyDOG5NXq @hSQehYkvFCPZaMh @QVhmYppzXBxSg3B @pxAw5ZAJ0URhZxO @ohbhysPsQ6W3eU0 @SpringM20 @okeikonojikann @SakuraKasumi311 @edeityan @bot68164037 @hannah_003_009 @RABDe500 @nago_yuyuyu こんなのもあります☺️ https://t.co/Z6HFYxm0pr
良く出来ている -> J-STAGE Articles - マルチモーダル情報に基づくグループ会話におけるコミュニケーション能力の推定 https://t.co/dk5if1nplA
マルチモーダル情報に基づくグループ会話におけるコミュニケーション能力の推定 https://t.co/G3Vaagqnrh コミュ障は声のボリュームを調整できないボキャ貧であることが明らかになってしまった
いまさらなのだけれど,岡田さんの論文が人工知能学会創設30周年記念論文特集の,最優秀論文賞に選ばれていることに気が付いた.マルチモーダル会話研究の未来は明るい? https://t.co/pv5ooj4Mok

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