首页 /研究 /Self context-aware emotion perception on human-robot interaction
HRI

Self context-aware emotion perception on human-robot interaction

Zihan Lin, Francisco Cruz, Eduardo Benítez Sandoval

发表年份
2024
引用次数
3
访问权限
开放获取

摘要

Emotion recognition plays a crucial role in various domains of human-robot interaction. In long-term interactions with humans, robots need to respond continuously and accurately, however, the mainstream emotion recognition methods mostly focus on short-term emotion recognition, disregarding the context in which emotions are perceived. Humans consider that contextual information and different contexts can lead to completely different emotional expressions. In this paper, we introduce self context-aware model (SCAM) that employs a two-dimensional emotion coordinate system for anchoring and re-labeling distinct emotions. Simultaneously, it incorporates its distinctive information retention structure and contextual loss. This approach has yielded significant improvements across audio, video, and multimodal. In the auditory modality, there has been a notable enhancement in accuracy, rising from 63.10% to 72.46%. Similarly, the visual modality has demonstrated improved accuracy, increasing from 77.03% to 80.82%. In the multimodal, accuracy has experienced an elevation from 77.48% to 78.93%. In the future, we will validate the reliability and usability of SCAM on robots through psychology experiments.

关键词

PerceptionModality (human–computer interaction)Context (archaeology)Computer scienceFocus (optics)Human–computer interactionCognitive psychologyEmotion recognitionEmotion perceptionHuman–robot interaction

相关论文

查看 HRI 分类全部论文