著者
Akira TAMAMORI Yoshihiko NANKAKU Keiichi TOKUDA
出版者
The Institute of Electronics, Information and Communication Engineers
雑誌
IEICE TRANSACTIONS on Information and Systems (ISSN:09168532)
巻号頁・発行日
vol.E97-D, no.7, pp.1842-1854, 2014-07-01

In this paper, a novel statistical model based on 2-D HMMs for image recognition is proposed. Recently, separable lattice 2-D HMMs (SL2D-HMMs) were proposed to model invariance to size and location deformation. However, their modeling accuracy is still insufficient because of the following two assumptions, which are inherited from 1-D HMMs: i) the stationary statistics within each state and ii) the conditional independent assumption of state output probabilities. To overcome these shortcomings in 1-D HMMs, trajectory HMMs were proposed and successfully applied to speech recognition and speech synthesis. This paper derives 2-D trajectory HMMs by reformulating the likelihood of SL2D-HMMs through the imposition of explicit relationships between static and dynamic features. The proposed model can efficiently capture dependencies between adjacent observations without increasing the number of model parameters. The effectiveness of the proposed model was evaluated in face recognition experiments on the XM2VTS database.

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研究グループの論文"Image Recognition Based on Separable Lattice Trajectory 2-D HMMs"が電子情報通信学会論文誌に掲載されました:http://t.co/a4mOay3Dl8
2本目のジャーナル論文がpublishされたで~ / Image Recognition Based on Separable Lattice Trajectory 2-D HMMs http://t.co/uOEv4dk1Ue

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