Hand–object interaction recognition based on visual attention using multiscopic cyber-physical-social system

A. Besari, Azhar Aulia Saputra, W. Chin, Kurnianingsih Kurnianingsih, N. Kubota
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引用次数: 3

Abstract

Computer vision-based cyber-physical-social systems (CPSS) are predicted to be the future of independent hand rehabilitation. However, there is a link between hand function and cognition in the elderly that this technology has not adequately supported. To investigate this issue, this paper proposes a multiscopic CPSS framework by developing hand–object interaction (HOI) based on visual attention. First, we use egocentric vision to extract features from hand posture at the microscopic level. With 94.87% testing accuracy, we use three layers of graph neural network (GNN) based on hand skeletal features to categorize 16 grasp postures. Second, we use a mesoscopic active perception ability to validate the HOI with eye tracking in the task-specific reach-to-grasp cycle. With 90.75% testing accuracy, the distance between the fingertips and the center of an object is used as input to a multi-layer gated recurrent unit based on recurrent neural network architecture. Third, we incorporate visual attention into the cognitive ability for classifying multiple objects at the macroscopic level. In two scenarios with four activities, we use GNN with three convolutional layers to categorize some objects. The outcome demonstrates that the system can successfully separate objects based on related activities. Further research and development are expected to support the CPSS application in independent rehabilitation.
基于视觉注意的多视域网络-物理-社会系统手-物交互识别
基于计算机视觉的网络-物理-社会系统(CPSS)被预测为独立手部康复的未来。然而,这项技术还没有充分支持老年人的手功能和认知之间的联系。为了研究这一问题,本文通过开发基于视觉注意的手-物交互(HOI),提出了一个多视角CPSS框架。首先,我们利用以自我为中心的视觉在微观层面上提取手的姿态特征。采用基于手部骨骼特征的三层图神经网络(GNN)对16种抓握姿势进行分类,测试准确率为94.87%。其次,我们使用中观主动感知能力在特定任务的伸手-抓握周期中通过眼动追踪来验证HOI。将指尖到物体中心的距离作为基于递归神经网络架构的多层门控递归单元的输入,测试精度为90.75%。第三,在宏观层面上,我们将视觉注意融入到对多物体分类的认知能力中。在两个有四个活动的场景中,我们使用具有三个卷积层的GNN对一些对象进行分类。结果表明,该系统可以成功地根据相关活动分离对象。进一步的研究和开发有望支持CPSS在独立康复中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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