نتایج جستجو برای: متد پنل پویا gmm

تعداد نتایج: 14507  

ژورنال: :پژوهشنامه اقتصاد و کسب و کار 0
علی سلمان پورزنوز صفر فرهنگ مهناز شکوهی فرد سیامک شکوهی فرد نویسنده مسئول

اهمیت فناوری اطلاعات و ارتباطات 5)فاوا( در اقتصاد ملی بر کسی پوشیده نیست. فاوا به اشکال متعدد، نظیر افزایش رشد اقتصادی وبهر هوری کلِّ اقتصاد، ارتقای سطح تجارت کالاها و خدمات و کاهش تورم و هزینۀ مبادلات، پیامدهای مثبتی را در اقتصاد درپی داشته است.2013 و با استفاده از تکنیک پانل دیتای - پژوهش حاضر بر آن است تا با استفاده از داد ههای کشورهای منتخب عضو منا 6، در دورۀ 2000پیشنهادشده ازسوی آرلانو و بان...

2016
Patrick Lumban Tobing Tomoki Toda Hirokazu Kameoka Satoshi Nakamura

A maximum likelihood parameter trajectory estimation based on a Gaussian mixture model (GMM) has been successfully implemented for acoustic-to-articulatory inversion mapping. In the conventional method, GMM parameters are optimized by maximizing a likelihood function for joint static and dynamic features of acoustic-articulatory data, and then, the articulatory parameter trajectories are estima...

Journal: :IEICE Transactions 2016
Shinnosuke Takamichi Tomoki Toda Graham Neubig Sakriani Sakti Satoshi Nakamura

This paper presents a novel statistical sample-based approach for Gaussian Mixture Model (GMM)-based Voice Conversion (VC). Although GMM-based VC has the promising flexibility of model adaptation, quality in converted speech is significantly worse than that of natural speech. This paper addresses the problem of inaccurate modeling, which is one of the main reasons causing the quality degradatio...

2000
Jae-Young Kim

While the classical framework has a rich set of limited information procedures such as GMM and other related methods, the situation is not so in the Bayesian framework. We develop a limited information procedure in the Bayesian framework that does not require the knowledge of the full likelihood. The developed procedure is a Bayesian counterpart of the classical GMM but has advantages over the ...

2010
Omid Dehzangi Bin Ma Chng Eng Siong Haizhou Li

Gaussian mixture modeling with universal background model (GMM-UBM) is a widely used method for speaker identification, where the GMM model is used to characterize a specific speaker’s voice. The estimation of model parameters is generally performed based on the maximum likelihood (ML) or maximum a posteriori (MAP) criteria. In this way, interspeaker information that discriminates between diffe...

2001
Guorong Xuan Wei Zhang Peiqi Chai

The HMM (Hidden Markov Model) is a probabilistic model of the joint probability of a collection of random variables with both observations and states. The GMM (Gaussian Mixture Model) is a finite mixture probability distribution model. Although the two models have a close relationship, they are always discussed independently and separately. The EM (Expectation-Maximum) algorithm is a general me...

2011
Avi Matza

The current paper proposes skew Gaussian mixture models for speaker recognition and an associated algorithm for its training from experimental data. Speaker identification experiments were conducted, in which speakers were modeled using the familiar Gaussian mixture models (GMM), and the new skewGMM. Each model type was evaluated using two sets of feature vectors, the mel-frequency cepstral coe...

2006
Rongqing Huang

Automatic dialect classification has gained interests in the field of speech research because it is important to characterize speaker traits and to estimate knowledge that could improve integrated speech technology (e.g., speech recognition, speaker recognition). This study addresses novel advances in unsupervised spontaneous Latin American Spanish dialect classification. The problem considers ...

2007
Yamato Ohtani Tomoki Toda Hiroshi Saruwatari Kiyohiro Shikano

One-to-many eigenvoice conversion (EVC) allows the conversion of a specific source speaker into arbitrary target speakers. Eigenvoice Gaussian mixture model (EV-GMM) is trained in advance with multiple parallel data sets consisting of the source speaker and many pre-stored target speakers. The EV-GMM is adapted for arbitrary target speakers using only a few utterances by estimating a small numb...

2009
Donglai Zhu Bin Ma Haizhou Li

Discriminative training (DT) methods of acoustic models, such as SVM and MMI-training GMM, have been proved effective in spoken language recognition. In this paper we propose a DT method for GMM using the large margin (LM) estimation. Unlike traditional MMI or MCE methods, the LM estimation attempts to enhance the generalization ability of GMM to deal with new data that exhibits mismatch with t...

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