2022
DOI: 10.3390/app13010373
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Auto-Scoring Feature Based on Sentence Transformer Similarity Check with Korean Sentences Spoken by Foreigners

Abstract: This paper contains the development of a training service for foreigners to help them increase their ability to speak Korean. The service developed in this paper is implemented in the form of a mobile application that shows specific Korean sentences to the user for them to record themselves speaking the sentence. The objective is to generate the score automatically based on how similar the recorded voice with the actual sentence using Speech-To-Text (STT) engines and Sentence Transformers. The application is d… Show more

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Cited by 2 publications
(1 citation statement)
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“…The proposed method can quickly and efficiently search for perturbation samples to misclassify the original samples. The second paper, authored by Wahyutama et al [7], developed a training service for non-native speakers of Korean to increase their ability to speak the language. The service can generate a score automatically based on how similar the recorded voice is to the actual sentence using speech-to-text (STT) engines and sentence transformers.…”
Section: Future Information and Communication Engineering 2022mentioning
confidence: 99%
“…The proposed method can quickly and efficiently search for perturbation samples to misclassify the original samples. The second paper, authored by Wahyutama et al [7], developed a training service for non-native speakers of Korean to increase their ability to speak the language. The service can generate a score automatically based on how similar the recorded voice is to the actual sentence using speech-to-text (STT) engines and sentence transformers.…”
Section: Future Information and Communication Engineering 2022mentioning
confidence: 99%