Feature reduction for hand gesture classification: Sparse coding approach

Jirayu Samkunta, P. Ketthong, K. Hashikura, Md. Abdus Samad Kamal, I. Murakami, Kou Yamada
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Abstract

Hand grasping patterns are highly complex and necessitate sophisticated hand kinematic models. To effectively investigate and study hand gestures in realistic and daily-life scenarios, it is crucial to reduce the dimensionality of hand kinematics. Many studies have proposed low-dimensional kinematic models using dimension reduction techniques, revealing that only a few dimensions of the kinematic model are significant for accurately recognizing hand gestures. In this paper, we propose a novel feature selection technique based on sparse coding to classify hand gestures, with a specific focus on grasping objects. Our technique outperforms Principal Component Analysis (PCA), which is a commonly used dimension reduction technique. By utilizing sparse coding, we are able to extract the most informative features from the kinematic data, resulting in a more precise and efficient classification of hand gestures. Our approach has significant potential for real-world applications in areas such as human-robot interaction, prosthetics, and virtual reality.
手势分类的特征约简:稀疏编码方法
手部抓取模式非常复杂,需要复杂的手部运动学模型。为了有效地调查和研究现实和日常生活场景中的手势,降低手部运动学的维数至关重要。许多研究提出了使用降维技术的低维运动学模型,表明运动学模型中只有少数几个维度对准确识别手势有重要意义。在本文中,我们提出了一种基于稀疏编码的新的特征选择技术来对手势进行分类,并特别关注抓取对象。我们的技术优于主成分分析(PCA),这是一种常用的降维技术。通过使用稀疏编码,我们能够从运动数据中提取最具信息量的特征,从而实现更精确和有效的手势分类。我们的方法在人机交互、假肢和虚拟现实等领域具有巨大的现实应用潜力。
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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