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Two-layer Fuzzy Kernel Regression for Human Emotional Intention Understanding

机译:人类情感意向理解的两层模糊核回归

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A two-layer fuzzy kernel regression (TLFKR) model is proposed for understanding human emotional intention in human-robot interaction, where TLFKR model consists of two layers, including fuzzy c-means (FCM) with kernel ridge regression (Kernel 1) for information analysis layer, fuzzy support vector regressions (FSVR) (Kernel 2) for intention understanding layer. TLFKR model represents the weight impact for each emotional information and aims to improve smooth human-robot interaction by endowing robot with human emotional intention understanding capability. Experimental Results show that the proposal obtains an intention understanding accuracy of 65.67%/68.33%/80.67% with the clusters number c=2/3/6 (according to different genders/ages/nationalities), which are 7.34%/7.18%/8.67% and 18.67%/21.33%/33.67% higher than that of TLFSVR and SVR, respectively. Additionally, preliminary application experiments are performed in the developing emotional social robot system, where two mobile robots and volunteers experience a scenario of "drinking at a bar", and social robots are able to express basic emotions and understand human order intention.
机译:提出了一种双层模糊内核回归(TLFKR)模型,用于了解人体机器人交互中的人类情感意图,其中TLFKR模型由两层组成,包括具有内核脊回归(内核1)的模糊C-Means(FCM)以获取信息分析层,模糊支持向量回归(FSVR)(FSVR)(FSVR)理解层的意图。 TLFKR模型代表每个情绪信息的重量影响,并旨在通过赋予人类情感意向理解能力的机器人来改善平稳的人机互动。实验结果表明,该提案的意图理解准确性为65.67%/ 68.33%/ 80.67%的簇数= 2/3/6(根据不同的性别/年龄/国籍),这些是7.34%/ 7.18%/比TLFSVR和SVR高8.67%和18.67%/ 21.33%/ 33.67%。此外,初步应用实验是在开发的情感社会机器人系统中进行的,其中两个移动机器人和志愿者体验了“在酒吧饮酒”的情景,社会机器人能够表达基本情绪并理解人为的秩序意图。

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