A Collaborative Filtering Approach to Real-Time Hand Pose Estimation

Chiho Choi, Ayan Sinha, J. H. Choi, Sujin Jang, K. Ramani
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引用次数: 57

Abstract

Collaborative filtering aims to predict unknown user ratings in a recommender system by collectively assessing known user preferences. In this paper, we first draw analogies between collaborative filtering and the pose estimation problem. Specifically, we recast the hand pose estimation problem as the cold-start problem for a new user with unknown item ratings in a recommender system. Inspired by fast and accurate matrix factorization techniques for collaborative filtering, we develop a real-time algorithm for estimating the hand pose from RGB-D data of a commercial depth camera. First, we efficiently identify nearest neighbors using local shape descriptors in the RGB-D domain from a library of hand poses with known pose parameter values. We then use this information to evaluate the unknown pose parameters using a joint matrix factorization and completion (JMFC) approach. Our quantitative and qualitative results suggest that our approach is robust to variation in hand configurations while achieving real time performance (≈ 29 FPS) on a standard computer.
一种实时手部姿态估计的协同滤波方法
协同过滤旨在通过集体评估已知用户偏好来预测推荐系统中未知用户的评分。在本文中,我们首先在协同滤波和姿态估计问题之间进行类比。具体而言,我们将手姿估计问题重新定义为推荐系统中具有未知物品评级的新用户的冷启动问题。受快速准确的协同滤波矩阵分解技术的启发,我们开发了一种基于商用深度相机RGB-D数据的手部姿态实时估计算法。首先,我们使用RGB-D域中的局部形状描述符从已知姿态参数值的手部姿态库中有效地识别出最近邻。然后,我们使用这些信息使用联合矩阵分解和补全(JMFC)方法来评估未知的姿态参数。我们的定量和定性结果表明,我们的方法对手部配置的变化具有鲁棒性,同时在标准计算机上实现实时性能(≈29 FPS)。
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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