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A Comparison of Dynamic Naive Bayesian Classifiers and Hidden Markov Models for Gesture Recognition

机译:动态朴素贝叶斯分类器与隐马尔可夫模型的手势识别比较

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In this paper we present a study to assess the performance of dynamic naive Bayesian classifiers (DNBCs) versus standard hidden Markov models (HMMs) for gesture recognition. DNBCs incorporate explicit conditional independence among gesture features given states into HMMs. We show that this factorization offers competitive classification rates and error dispersion, it requires fewer parameters and it improves training time considerably in the presence of several attributes. We propose a set of qualitative and natural set of posture and motion attributes to describe gestures. We show that these posture-motion features increase recognition rates significantly in comparison to motion features. Additionally, an adaptive skin detection approach to cope with multiple users and different lighting conditions is proposed. We performed one of the most extensive experimentation presented in the literature to date that considers gestures of a single user, multiple people and with variations on distance and rotation using a gesture database with 9441 examples of 9 different classes performed by 15 people. Results show the effectiveness of the overall approach and the reliability of DNBCs in gesture recognition.
机译:在本文中,我们提出一项研究,以评估动态朴素贝叶斯分类器(DNBC)与标准隐马尔可夫模型(HMM)进行手势识别的性能。 DNBC将给定状态的手势特征之间的显式条件独立纳入了HMM。我们证明了这种分解能提供有竞争力的分类率和错误分散性,它需要更少的参数,并且在存在多个属性的情况下大大缩短了训练时间。我们提出了一组定性和自然的姿势和运动属性来描述手势。我们表明,与运动特征相比,这些姿势运动特征显着提高了识别率。此外,提出了一种适应性皮肤检测方法,以应对多个用户和不同的照明条件。我们进行了迄今为止文献中提出的最广泛的实验之一,该实验使用手势数据库(由15个人执行的9个不同类别的9441个示例)来考虑单个用户,多个人的手势以及距离和旋转的变化。结果显示了整体方法的有效性以及DNBC在手势识别中的可靠性。

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