估算与会者在会议中的灵感的数据集,实现基于人工智能的会议支持系统,提高工人的幸福感

Soki Arai, Yuki Yamamoto, Yuji Nozaki, Haruka Matsukura, Maki Sakamoto
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摘要

在智力生产活动中会举行各种会议,工人们需要花费大量时间来创造想法。在创意会议中,由于与会者需要一个接一个地提出新想法,有些与会者在表达非常规想法时会犹豫不决,因此会议主持人和协调人有时很难高效地主持会议。因此,我们建议开发一种基于人工智能的会议支持系统,该系统可估算与会者的灵感,并帮助营造舒适的会议环境,从而提高员工的幸福感。与会者的灵感假定是根据他们的言语和微观行为(包括微笑和点头)估算出来的。本文报告了我们为开发拟议系统而收集的数据集。该数据集包括通过近红外光谱仪测量的参与者脑血流量、通过视频记录的微观行为注释以及参与者通过按钮报告的灵感。我们通过模拟会议收集了 1020 分钟的数据。在未来的工作中,我们计划训练一个基于 LSTM(长短期记忆)的神经网络模型来实现所提出的系统。
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A Dataset for Estimating Participant Inspiration in Meetings toward AI-Based Meeting Support System to Improve Worker Wellbeing
Various meetings are carried out in intellectual production activities and workers have to spend much time to create ideas. In creative meetings, it is sometime difficult for the meeting moderators and facilitators to efficiently conduct the meetings because the participants are required to come up with new ideas one after another and some participants hesitate to express unconventional ideas. Therefore, we propose to develop an AI-based meeting support system that estimates participants’ inspiration and helps to generate comfortable meeting environments for improvement of worker wellbeing. Participants’ inspiration is assumed to be estimated based on their speech and micro behaviors including smiles and nods. In this paper, a dataset we collected for the development of the proposed system is reported. The dataset consists of participants’ brain blood flows measured near-infrared spectrometers, micro behavior annotated from video recording, and inspiration the participants reported with buttons. The data for 1020 min was collected by conducting simulation meetings. In future work, we plan to train an LSTM (long short-term memory) based neural network model to realize the proposed system.
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