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EVENT BASED SELF-SUPERVISED TEMPORAL INTEGRATION FOR MULTIMODAL SENSOR DATA

Emilia Barakova, Tino Lourens

发表年份
2005
引用次数
15

摘要

A method for synergistic integration of multimodal sensor data is proposed in this paper. This method is based on two aspects of the integration process: (1) achieving synergistic integration of two or more sensory modalities, and (2) fusing the various information streams at particular moments during processing. Inspired by psychophysical experiments, we propose a self-supervised learning method for achieving synergy with combined representations. Evidence from temporal registration and binding experiments indicates that different cues are processed individually at specific time intervals. Therefore, an event-based temporal co-occurrence principle is proposed for the integration process. This integration method was applied to a mobile robot exploring unfamiliar environments. Simulations showed that integration enhanced route recognition with many perceptual similarities; moreover, they indicate that a perceptual hierarchy of knowledge about instant movement contributes significantly to short-term navigation, but that visual perceptions have bigger impact over longer intervals.

关键词

Computer scienceEvent (particle physics)Data integrationArtificial intelligenceHuman–computer interactionData mining

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