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Compound Hidden Markov Model for Activity Labelling
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作者 Jose Israel Figueroa-Angulo Jesus Savage +2 位作者 Ernesto Bribiesca Boris Escalante Luis Enrique Sucar 《International Journal of Intelligence Science》 2015年第5期177-195,共19页
This research presents a novel way of labelling human activities from the skeleton output computed from RGB-D data from vision-based motion capture systems. The activities are labelled by means of a Compound Hidden Ma... This research presents a novel way of labelling human activities from the skeleton output computed from RGB-D data from vision-based motion capture systems. The activities are labelled by means of a Compound Hidden Markov Model. The linkage of several Linear Hidden Markov Models to common states, makes a Compound Hidden Markov Model. Each separate Linear Hidden Markov Model has motion information of a human activity. The sequence of most likely states, from a sequence of observations, indicates which activities are performed by a person in an interval of time. The purpose of this research is to provide a service robot with the capability of human activity awareness, which can be used for action planning with implicit and indirect Human-Robot Interaction. The proposed Compound Hidden Markov Model, made of Linear Hidden Markov Models per activity, labels activities from unknown subjects with an average accuracy of 59.37%, which is higher than the average labelling accuracy for activities of unknown subjects of an Ergodic Hidden Markov Model (6.25%), and a Compound Hidden Markov Model with activities modelled by a single state (18.75%). 展开更多
关键词 hidden markov model compound hidden markov model ACTIVITY Recognition HUMAN ACTIVITY HUMAN MOTION MOTION Capture Skeleton Computer Vision Machine Learning MOTION Analysis
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基于瓶颈复合特征的声学模型建立方法 被引量:3
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作者 郑文秀 赵峻毅 +1 位作者 文心怡 姚引娣 《计算机工程》 CAS CSCD 北大核心 2020年第11期301-305,314,共6页
针对梅尔频率倒谱系数(MFCC)语音特征不能有效反映连续帧之间有效信息的问题,基于深度神经网络相关性和紧凑性特征,提出一种融合神经网瓶颈特征与MFCC特征的复合特征构造方法,提高语音的表征能力和建模能力。从语音数据中提取MFCC特征... 针对梅尔频率倒谱系数(MFCC)语音特征不能有效反映连续帧之间有效信息的问题,基于深度神经网络相关性和紧凑性特征,提出一种融合神经网瓶颈特征与MFCC特征的复合特征构造方法,提高语音的表征能力和建模能力。从语音数据中提取MFCC特征作为输入数据,将MFCC特征和BN特征进行串接得到新的复合特征,并进行GMM-HMM声学建模。在TIMIT数据库上的实验结果表明,与单一的瓶颈特征和深度神经网络后验特征相比,该方法识别率明显提升。 展开更多
关键词 深度神经网络 梅尔频率倒谱系数 瓶颈特征 复合特征 高斯混合模型-隐马尔科夫模型
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