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Automatic Emotion Recognition System: A cross Culture Study between Tamil and Russian Speaking Children. / Ruban, Nersissona; Prithiraj, Bhuyan; Mekala A., Mary; Ляксо, Елена Евгеньевна.

2023 3rd International Conference on Advanced Research in Computing (ICARC). Belihuloya, Sri Lanka : IEEE Canada, 2023. p. 84-89.

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Harvard

Ruban, N, Prithiraj, B, Mekala A., M & Ляксо, ЕЕ 2023, Automatic Emotion Recognition System: A cross Culture Study between Tamil and Russian Speaking Children. in 2023 3rd International Conference on Advanced Research in Computing (ICARC). IEEE Canada, Belihuloya, Sri Lanka, pp. 84-89, 2023 3rd International Conference on Advanced Research in Computing (ICARC), Belihuloya, Sri Lanka, 23/02/23. https://doi.org/10.1109/icarc57651.2023.10145751

APA

Ruban, N., Prithiraj, B., Mekala A., M., & Ляксо, Е. Е. (2023). Automatic Emotion Recognition System: A cross Culture Study between Tamil and Russian Speaking Children. In 2023 3rd International Conference on Advanced Research in Computing (ICARC) (pp. 84-89). IEEE Canada. https://doi.org/10.1109/icarc57651.2023.10145751

Vancouver

Ruban N, Prithiraj B, Mekala A. M, Ляксо ЕЕ. Automatic Emotion Recognition System: A cross Culture Study between Tamil and Russian Speaking Children. In 2023 3rd International Conference on Advanced Research in Computing (ICARC). Belihuloya, Sri Lanka: IEEE Canada. 2023. p. 84-89 https://doi.org/10.1109/icarc57651.2023.10145751

Author

Ruban, Nersissona ; Prithiraj, Bhuyan ; Mekala A., Mary ; Ляксо, Елена Евгеньевна. / Automatic Emotion Recognition System: A cross Culture Study between Tamil and Russian Speaking Children. 2023 3rd International Conference on Advanced Research in Computing (ICARC). Belihuloya, Sri Lanka : IEEE Canada, 2023. pp. 84-89

BibTeX

@inproceedings{a18500cfc0794f599e96906a3d36dff8,
title = "Automatic Emotion Recognition System: A cross Culture Study between Tamil and Russian Speaking Children.",
abstract = "Speech based communication contains both linguistic and paralinguistic information. It conveys emotions not only through its verbal communication, but also through voice characteristics such as pitch, volume, and stress. The objective of this study is to convey the child{\textquoteright}s emotion to a caretaker. To achieve this, a cross-cultural study of four emotions {"}joy - neutral (calm state) - sadness - anger{"} in children aged 8-12 years is considered. The data collection is carried out in multiple modes like acting speech in Russian and spontaneous and acting speech in Tamil language. SVM and MLP classitiers were used by the Russian specialist to train and validate speech data of both languages. The accuracy achieved by the Russian team is 84.1% and the Indian specialists used CNN and obtained the training and validation accuracy of 90% and >68% over 75 Epoch and used 7-layer CNN and obtained the training and validation accuracy of 95% and > 65% over 50 Epoch. The goal of the study is to see how well Russian and Indian specialists can recognise the emotional condition of Russian and Indian children based on their speech, and the results are correlated with computer-based emotion classification algorithms with various machine learning and deep net architectures.",
keywords = "Emotion detection , Convolutional Neural Network , Machine Learning , Russian Speech , Tamil Speech , Support Vector Machine (SVM).",
author = "Nersissona Ruban and Bhuyan Prithiraj and {Mekala A.}, Mary and Ляксо, {Елена Евгеньевна}",
year = "2023",
month = jun,
day = "12",
doi = "10.1109/icarc57651.2023.10145751",
language = "English",
isbn = "979-8-3503-4738-8",
pages = "84--89",
booktitle = "2023 3rd International Conference on Advanced Research in Computing (ICARC)",
publisher = "IEEE Canada",
address = "Canada",
note = "null ; Conference date: 23-02-2023 Through 24-02-2023",
url = "https://ieeexplore.ieee.org/",

}

RIS

TY - GEN

T1 - Automatic Emotion Recognition System: A cross Culture Study between Tamil and Russian Speaking Children.

AU - Ruban, Nersissona

AU - Prithiraj, Bhuyan

AU - Mekala A., Mary

AU - Ляксо, Елена Евгеньевна

PY - 2023/6/12

Y1 - 2023/6/12

N2 - Speech based communication contains both linguistic and paralinguistic information. It conveys emotions not only through its verbal communication, but also through voice characteristics such as pitch, volume, and stress. The objective of this study is to convey the child’s emotion to a caretaker. To achieve this, a cross-cultural study of four emotions "joy - neutral (calm state) - sadness - anger" in children aged 8-12 years is considered. The data collection is carried out in multiple modes like acting speech in Russian and spontaneous and acting speech in Tamil language. SVM and MLP classitiers were used by the Russian specialist to train and validate speech data of both languages. The accuracy achieved by the Russian team is 84.1% and the Indian specialists used CNN and obtained the training and validation accuracy of 90% and >68% over 75 Epoch and used 7-layer CNN and obtained the training and validation accuracy of 95% and > 65% over 50 Epoch. The goal of the study is to see how well Russian and Indian specialists can recognise the emotional condition of Russian and Indian children based on their speech, and the results are correlated with computer-based emotion classification algorithms with various machine learning and deep net architectures.

AB - Speech based communication contains both linguistic and paralinguistic information. It conveys emotions not only through its verbal communication, but also through voice characteristics such as pitch, volume, and stress. The objective of this study is to convey the child’s emotion to a caretaker. To achieve this, a cross-cultural study of four emotions "joy - neutral (calm state) - sadness - anger" in children aged 8-12 years is considered. The data collection is carried out in multiple modes like acting speech in Russian and spontaneous and acting speech in Tamil language. SVM and MLP classitiers were used by the Russian specialist to train and validate speech data of both languages. The accuracy achieved by the Russian team is 84.1% and the Indian specialists used CNN and obtained the training and validation accuracy of 90% and >68% over 75 Epoch and used 7-layer CNN and obtained the training and validation accuracy of 95% and > 65% over 50 Epoch. The goal of the study is to see how well Russian and Indian specialists can recognise the emotional condition of Russian and Indian children based on their speech, and the results are correlated with computer-based emotion classification algorithms with various machine learning and deep net architectures.

KW - Emotion detection , Convolutional Neural Network , Machine Learning , Russian Speech , Tamil Speech , Support Vector Machine (SVM).

UR - https://ieeexplore.ieee.org/document/10145751/authors#authors

UR - https://www.mendeley.com/catalogue/6aafdd0f-e78e-37b7-8192-664f09152ea5/

U2 - 10.1109/icarc57651.2023.10145751

DO - 10.1109/icarc57651.2023.10145751

M3 - Conference contribution

SN - 979-8-3503-4738-8

SP - 84

EP - 89

BT - 2023 3rd International Conference on Advanced Research in Computing (ICARC)

PB - IEEE Canada

CY - Belihuloya, Sri Lanka

Y2 - 23 February 2023 through 24 February 2023

ER -

ID: 106595513