期刊文献+

非特定人手语识别统计模型的改进及应用

Improving signer-independent sign language recognition
在线阅读 下载PDF
导出
摘要 目前,非特定人手语识别与特定人系统相比还有较大的差距.手语数据差异性使得非特定人手语识别中提取手语数据有效的共同特征非常困难,因而,手语数据差异性在一定程度上影响了非特定人手语识别的识别效果.本文从手语数据存在差异性这一角度入手,利用流形概念的学习和推理能力并在流形允许变化的范围内进行有效建模.在建模的过程中,从范函求极值的角度出发,给出了一个让人容易理解且直观化的推导过程.进而应用流形概念中的切向量来改进手语识别的统计模型(TV/HMM)并应用于大词汇量非特定人手语识别,以解决手语数据的差异性对大词汇量非特定人手语识别所造成的影响.实验表明,改进后的TV/HMM识别系统在大词汇量非注册的易混词集上识别率高明显. There is a huge gap between signer-independent sign language recognition and signer-dependent sign language recognition systems. The data variance from different signers in sign language makes it difficult to extract effective common features of data in signer-independent recognition. This data variance unavoidably affects the effect of signer-independent sign language recognition. This paper presents a model of an allowable variance range. It uses the learning and reasoning abilities of manifold concept to deal with sign language data variance. An easy and intuitive derivation method was created to establish the extremum of the function. A manifold tangent vectors based sign language recognition statistical model (TV/HMM) was applied in our signer-independent sign language recognition to resolve data variance in signer-independent sign language recognition. Experiments showed that, compared with traditional HMM recognition systems, the average discrimination rate significantly improves.
出处 《哈尔滨工程大学学报》 EI CAS CSCD 北大核心 2009年第11期1273-1278,共6页 Journal of Harbin Engineering University
基金 国家自然科学基金资助项目(60533030 60602007 60873142) 哈尔滨市科技创新人才基金资助项目(2008rfqxs037)
关键词 HMM 非特定人手语识别 流形 切向量 TV/HMM HMM signer-independent sign language recognition (SISLR) manifold tangent vectors TV/HMM
  • 相关文献

参考文献19

二级参考文献71

  • 1[1]HYVRINEN A.Survey on independent component analysis[J].Neural Computing Surveys,1999,2 (4):94-128.
  • 2[2]TURK M,PENTLAND A.Eigenfaces for recognition[J].Journal of Cognitive Neuroscience,1991,3 (1):71-86.
  • 3[3]GONZALEZ R C,WOODS R E.Digital image processing:2nd ed[M].Beijing:Publishing House of Electronics Industry,2003.
  • 4[4]SEUNG H S,LEE D D.The manifold ways of perception[J].Science,2000,290(5500):2268-2269.
  • 5[5]TENENBAUM J,SILVA D D,LANGFORD J.A global geometric framework for nonlinear dimensionality reduction[J].Science,2000,290(5500):2319-2323.
  • 6[6]ROWEIS S,SAUL L.Nonlinear dimensionality reduction by locally linear embedding[J].Science,2000,290(5500):2323-2326.
  • 7[9]ZHANG C S,WANG J,ZHAO N Y,ZHANG D.Reconstruction and analysis of multi-pose face images based on nonlinear dimensionality reduction[J].Pattern Recognition,2004,37(1):325-336.
  • 8[13]BELKIN M,NIYOGI P.Laplacian eigenmaps for dimensionality reduction and data representation[J].Neural Computation,2003,15(6):1373-1396.
  • 9[14]ZHANG Z Y,ZHA H Y.Principal manifolds and nonlinear dimensionality reduction via tangent space alignment[J].SIAM Journal of Scientific Computing,2005,26(1):313-338.
  • 10[15]SIMARD P Y,LECUN Y A,DENKER J S.Efficient pattern recognition using a new transformation distance[J].Advances in Neural Information Processing Systems,1993(5):50-58.

共引文献291

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部