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A Study of Feature Combination in Gesture Recognition with Kinect

机译:用kinect识别手势识别特征组合的研究

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Human gesture recognition is an interdisciplinary problem, with many important applications. In the structure of a gesture recognition system, feature extraction, without doubt, is one of the most important factor affecting the performance. In this paper, we desired to improve the covariance feature, which is the current state-of-the-art feature extraction method, by integrating other frame-level features extracted in the data captured by Microsoft Kinect, and experimenting the features with various classification methods such as Random Forest (RF), Multi Layer Perceptron (MLP), Support Vector Machines (SVM). The leave-person-out experiments showed that feature combination is beneficial, especially with Random Forest, to achieve the highest score in recognition, which is improved by 2%, from 90.9% to 93.0%. However, the dimensional increase sometimes exacerbated the performance, indicating the side effect of feature combination.
机译:人类姿态识别是一个跨学科问题,具有许多重要的应用。在手势识别系统的结构中,特征提取毫无疑问是影响性能的最重要因素之一。在本文中,我们希望通过集成在Microsoft Kinect捕获的数据中提取的其他帧级功能,并尝试具有各种分类的特征来改进当前最先进的特征提取方法的协方差特征。方法如随机森林(RF),多层Perceptron(MLP),支持载体机(SVM)。休假实验表明,特征组合有益,特别是随机森林,以达到识别的最高分,增长率为2%,从90.9%到93.0%。然而,尺寸增加有时会加剧性能,表明特征组合的副作用。

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