Automatic animation of an articulatory tongue model from ultrasound images using Gaussian mixture regression

Author(s):  
Diandra Fabre ◽  
Thomas Hueber ◽  
Pierre Badin
2019 ◽  
Vol 8 (4) ◽  
pp. 460
Author(s):  
Mahmoud I. Abdalla ◽  
Mohsen A. Rashwan ◽  
Mohamed A. Elserafy

During the previous year's holistic approach showing satisfactory results to solve ‎the ‎problem of Arabic handwriting word  recognition instead of word letters ‎‎segmentation.‎ ‎In this paper, we present an efficient system for ‎ generation realistic Arabic handwriting dataset from ASCII input ‎text. We carefully selected simple word list that contains most Arabic ‎letters normal and ligature connection cases. To improve the ‎performance of new letters reproduction we developed our ‎normalization method that adapt its clustering action according to ‎created Arabic letters families. We enhanced  Gaussian Mixture ‎Model process to learn letters template by detecting the ‎number and position of Gaussian component by implementing ‎Ramer-Douglas-Peucker‎ algorithm which improve the new letters ‎shapes reproduced by using and Gaussian Mixture Regression. ‎‎We learn the translation distance between word-part to achieve ‎real handwriting word generation shape.‎ Using combination of LSTM and CTC layer as a recognizer to validate the ‎efficiency of our approach in generating new realistic Arabic handwriting words inherit user handwriting style as shown by the experimental results.‎ 


2014 ◽  
Vol 47 (3) ◽  
pp. 1067-1072
Author(s):  
Xiaofeng Yuan ◽  
Zhiqiang Ge ◽  
Hongwei Zhang ◽  
Zhihuan Song ◽  
Peiliang Wang

Author(s):  
Yan Tian ◽  
Leonid Sigal ◽  
Hernán Badino ◽  
Fernando De la Torre ◽  
Yong Liu

2015 ◽  
Vol 23 (12) ◽  
pp. 2246-2259 ◽  
Author(s):  
Thomas Hueber ◽  
Laurent Girin ◽  
Xavier Alameda-Pineda ◽  
Gerard Bailly

Author(s):  
Abdullah Yesilova ◽  
Ayhan Yilmaz ◽  
Gazel Ser ◽  
Baris Kaki

The purpose of this study was to classify Anatolian buffalo using Gaussian mixture regression model according to discrete and continuous environmental effects. Gaussian mixture model performs separately regression analysis both within and between groups. This is an important property of Gaussian mixture models which makes it different from other multivariate statistical methods. The data were obtained from 1455 Anatolian buffalo lactation milk yield records reared in seven different locations in Bitlis province, Turkey. Age of dam, lactation duration and locations were considered as environmental effects on lactation milk yield. Data set was divided into three homogenous subgroups with respect to AIC and BIC in the Gaussian mixture regression, based on environmental effects on lactation milk yield. Estimated mean for lactation milk yields and mixing probabilities for the first, second and third subgroups were determined as 1494.33 kg (16.9%), 540.33 kg (45.2%) and 847.61 (37.9%), respectively. The numbers of buffalo in each subgroup according to mixing probability were obtained as 159, 756, and 540 for the first, second, and third groups, respectively. The effects of lactation period, age of dam and villages were found statistically significant on lactation milk yield in subgroup 1 that was highest mean for lactation milk yield (p less than 0.01). In conclusion, results showed that Gaussian mixture regression was an important tool for classifying quantitative traits considering environmental effects in animal breeding.


2015 ◽  
Vol 9 (7) ◽  
pp. 1083-1092 ◽  
Author(s):  
Bjoern Kolewe ◽  
Torsten Jeinsch ◽  
Robert Beckmann ◽  
Adel Haghani

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