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ABC algorithm based optimization of 1-D hidden Markov model for hand gesture recognition applications

机译:基于ABC算法的1-D隐藏马尔可夫模型的优化手势识别应用

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摘要

Hand gestures are extensively used to communicate based on non-verbal interaction with computers. This mode of communication is made possible by implementing machine learning algorithms for pattern recognition. A stochastic mathematical approach is used to interpret the hand gesture pattern for classification. In this work, a predominant method is used by 1-D hidden Markov model (1-D HMM) for classifying the patterns and to measure its performance. During training phase, 1-D HMM is used to predict its next state sequence of hand gestures using dynamic programming methods such as Baum-Welch algorithm and Viterbi algorithm. However, dynamic programming based prediction methodologies are complex. To enhance the performance of 1-D HMM model, its parameter and observation state sequence must be optimized using bio-inspired heuristic approaches. In this work, Artificial Bee Colony (ABC) algorithm is used for optimization. A hybrid 1-D HMM model with ABC optimization has been proposed which has yielded a better performance metrics like recognition rate and error rate for Cambridge hand gesture dataset.
机译:手势广泛地用于基于与计算机的非言语交互进行通信。通过实现用于模式识别的机器学习算法,可以实现这种通信模式。随机数学方法用于解释用于分类的手势模式。在这项工作中,优势方法由1-D隐藏的马尔可夫模型(1-D HMM)使用,用于对模式进行分类并测量其性能。在训练阶段期间,使用动态编程方法(例如BAUM-Welch算法和维特比算法)来预测其1-D HMM来预测其下一个状态的手势序列。然而,基于动态编程的预测方法是复杂的。为了增强1-D HMM模型的性能,必须使用生物启发的启发式方法优化其参数和观察状态序列。在这项工作中,人造蜂菌落(ABC)算法用于优化。已经提出了一种具有ABC优化的混合1-D HMM模型,其产生了更好的性能度量,如剑桥手势数据集的识别率和错误率。

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