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Touch modality interpretation for an EIT-based sensitive skin

David Silvera Tawil, David Rye, Mari Velonaki

发表年份
2011
引用次数
46

摘要

During social interaction, humans extract important information from tactile stimuli that improves their understanding of the interaction. The development of a similar capacity in a robot will contribute to the future success of intuitive human-robot interaction. This paper presents a method of touch sensing based on the principle of electrical impedance tomography (EIT) that can be used to implement a large, flexible and stretchable artificial sensitive skin for robots. A classifier based on the “LogitBoost” algorithm is used to classify the modality of six different types of touch on an experimental EIT-based skin. Experiments showed that the modality of touch was correctly classified in approximately 80% of the trials. This is comparable with the experimental accuracy of a human touch recipient. The classification accuracies show significant improvements from previous classification algorithms applied to different artificial sensitive skins.

关键词

Modality (human–computer interaction)Artificial intelligenceRobotComputer scienceClassifier (UML)Tactile sensorElectrical impedance tomographyHuman–robot interactionComputer visionSensitive skin

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