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Holoscopic 3D Microgesture Recognition by Deep Neural Network Model Based on Viewpoint Images and Decision Fusion

机译:基于视点图像和决策融合的深神经网络模型的全神3D微观度识别

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摘要

Finger microgestures have been widely used in human computer interaction (HCI), particularly for interactive applications, such as virtual reality (VR) and augmented reality (AR) technologies, to provide immersive experience. However, traditional 2D image-based microgesture recognition suffers from low accuracy due to the limitations of 2D imaging sensors, which have no depth information. In this article, we proposed an innovative 3D microgesture recognition system based on a holoscopic 3D imaging sensor. Due to the lack of holoscopic 3D datasets, a comprehensive holoscopic 3D microgesture (HoMG) database is created and used to develop a robust 3D microgesture recognition method. Then, a fast algorithm is proposed to extract multiviewpoint images from one holoscopic image. Furthermore, we applied a CNN model with an attention-based residual block to each viewpoint image to improve the algorithm performance. Finally, bagging classification tree decision-level fusion is applied to combine the predictions. The experimental results demonstrate that the proposed method outperforms state-of-the-art methods and delivers a better accuracy than existing methods.
机译:手指微生物被广泛用于人机交互(HCI),特别是对于互动应用,例如虚拟现实(VR)和增强现实(AR)技术,以提供沉浸体验。然而,由于2D成像传感器的局限性,传统的2D基于图像的微生物度识别遭受了低精度,其没有深度信息。在本文中,我们提出了一种基于全镜3D成像传感器的创新3D微生物识别系统。由于缺乏全镜3D数据集,创建了一种综合的全镜3D微生物(HOMG)数据库,并用于开发鲁棒3D微生物识别方法。然后,提出了一种快速算法来从一个全镜图像中提取多视图点图像。此外,我们将CNN模型应用于每个视点图像的基于注意力的残余块,以提高算法性能。最后,堆垛分类树决策级融合应用于结合预测。实验结果表明,所提出的方法优于最先进的方法,并提供比现有方法更好的准确性。

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