1,107 research outputs found

    A computational model for studying L1’s effect on L2 speech learning

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    abstract: Much evidence has shown that first language (L1) plays an important role in the formation of L2 phonological system during second language (L2) learning process. This combines with the fact that different L1s have distinct phonological patterns to indicate the diverse L2 speech learning outcomes for speakers from different L1 backgrounds. This dissertation hypothesizes that phonological distances between accented speech and speakers' L1 speech are also correlated with perceived accentedness, and the correlations are negative for some phonological properties. Moreover, contrastive phonological distinctions between L1s and L2 will manifest themselves in the accented speech produced by speaker from these L1s. To test the hypotheses, this study comes up with a computational model to analyze the accented speech properties in both segmental (short-term speech measurements on short-segment or phoneme level) and suprasegmental (long-term speech measurements on word, long-segment, or sentence level) feature space. The benefit of using a computational model is that it enables quantitative analysis of L1's effect on accent in terms of different phonological properties. The core parts of this computational model are feature extraction schemes to extract pronunciation and prosody representation of accented speech based on existing techniques in speech processing field. Correlation analysis on both segmental and suprasegmental feature space is conducted to look into the relationship between acoustic measurements related to L1s and perceived accentedness across several L1s. Multiple regression analysis is employed to investigate how the L1's effect impacts the perception of foreign accent, and how accented speech produced by speakers from different L1s behaves distinctly on segmental and suprasegmental feature spaces. Results unveil the potential application of the methodology in this study to provide quantitative analysis of accented speech, and extend current studies in L2 speech learning theory to large scale. Practically, this study further shows that the computational model proposed in this study can benefit automatic accentedness evaluation system by adding features related to speakers' L1s.Dissertation/ThesisDoctoral Dissertation Speech and Hearing Science 201

    CAPTλ₯Ό μœ„ν•œ 발음 변이 뢄석 및 CycleGAN 기반 ν”Όλ“œλ°± 생성

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    ν•™μœ„λ…Όλ¬Έ(박사)--μ„œμšΈλŒ€ν•™κ΅ λŒ€ν•™μ› :μΈλ¬ΈλŒ€ν•™ ν˜‘λ™κ³Όμ • 인지과학전곡,2020. 2. μ •λ―Όν™”.Despite the growing popularity in learning Korean as a foreign language and the rapid development in language learning applications, the existing computer-assisted pronunciation training (CAPT) systems in Korean do not utilize linguistic characteristics of non-native Korean speech. Pronunciation variations in non-native speech are far more diverse than those observed in native speech, which may pose a difficulty in combining such knowledge in an automatic system. Moreover, most of the existing methods rely on feature extraction results from signal processing, prosodic analysis, and natural language processing techniques. Such methods entail limitations since they necessarily depend on finding the right features for the task and the extraction accuracies. This thesis presents a new approach for corrective feedback generation in a CAPT system, in which pronunciation variation patterns and linguistic correlates with accentedness are analyzed and combined with a deep neural network approach, so that feature engineering efforts are minimized while maintaining the linguistically important factors for the corrective feedback generation task. Investigations on non-native Korean speech characteristics in contrast with those of native speakers, and their correlation with accentedness judgement show that both segmental and prosodic variations are important factors in a Korean CAPT system. The present thesis argues that the feedback generation task can be interpreted as a style transfer problem, and proposes to evaluate the idea using generative adversarial network. A corrective feedback generation model is trained on 65,100 read utterances by 217 non-native speakers of 27 mother tongue backgrounds. The features are automatically learnt in an unsupervised way in an auxiliary classifier CycleGAN setting, in which the generator learns to map a foreign accented speech to native speech distributions. In order to inject linguistic knowledge into the network, an auxiliary classifier is trained so that the feedback also identifies the linguistic error types that were defined in the first half of the thesis. The proposed approach generates a corrected version the speech using the learners own voice, outperforming the conventional Pitch-Synchronous Overlap-and-Add method.μ™Έκ΅­μ–΄λ‘œμ„œμ˜ ν•œκ΅­μ–΄ κ΅μœ‘μ— λŒ€ν•œ 관심이 κ³ μ‘°λ˜μ–΄ ν•œκ΅­μ–΄ ν•™μŠ΅μžμ˜ μˆ˜κ°€ 크게 μ¦κ°€ν•˜κ³  있으며, μŒμ„±μ–Έμ–΄μ²˜λ¦¬ κΈ°μˆ μ„ μ μš©ν•œ 컴퓨터 기반 발음 ꡐ윑(Computer-Assisted Pronunciation Training; CAPT) μ–΄ν”Œλ¦¬μΌ€μ΄μ…˜μ— λŒ€ν•œ 연ꡬ λ˜ν•œ 적극적으둜 이루어지고 μžˆλ‹€. κ·ΈλŸΌμ—λ„ λΆˆκ΅¬ν•˜κ³  ν˜„μ‘΄ν•˜λŠ” ν•œκ΅­μ–΄ λ§ν•˜κΈ° ꡐ윑 μ‹œμŠ€ν…œμ€ μ™Έκ΅­μΈμ˜ ν•œκ΅­μ–΄μ— λŒ€ν•œ 언어학적 νŠΉμ§•μ„ μΆ©λΆ„νžˆ ν™œμš©ν•˜μ§€ μ•Šκ³  있으며, μ΅œμ‹  μ–Έμ–΄μ²˜λ¦¬ 기술 λ˜ν•œ μ μš©λ˜μ§€ μ•Šκ³  μžˆλŠ” 싀정이닀. κ°€λŠ₯ν•œ μ›μΈμœΌλ‘œμ¨λŠ” 외ꡭ인 λ°œν™” ν•œκ΅­μ–΄ ν˜„μƒμ— λŒ€ν•œ 뢄석이 μΆ©λΆ„ν•˜κ²Œ 이루어지지 μ•Šμ•˜λ‹€λŠ” 점, 그리고 κ΄€λ ¨ 연ꡬ가 μžˆμ–΄λ„ 이λ₯Ό μžλ™ν™”λœ μ‹œμŠ€ν…œμ— λ°˜μ˜ν•˜κΈ°μ—λŠ” κ³ λ„ν™”λœ 연ꡬ가 ν•„μš”ν•˜λ‹€λŠ” 점이 μžˆλ‹€. 뿐만 μ•„λ‹ˆλΌ CAPT 기술 μ „λ°˜μ μœΌλ‘œλŠ” μ‹ ν˜Έμ²˜λ¦¬, 운율 뢄석, μžμ—°μ–΄μ²˜λ¦¬ 기법과 같은 νŠΉμ§• μΆ”μΆœμ— μ˜μ‘΄ν•˜κ³  μžˆμ–΄μ„œ μ ν•©ν•œ νŠΉμ§•μ„ μ°Ύκ³  이λ₯Ό μ •ν™•ν•˜κ²Œ μΆ”μΆœν•˜λŠ” 데에 λ§Žμ€ μ‹œκ°„κ³Ό λ…Έλ ₯이 ν•„μš”ν•œ 싀정이닀. μ΄λŠ” μ΅œμ‹  λ”₯λŸ¬λ‹ 기반 μ–Έμ–΄μ²˜λ¦¬ κΈ°μˆ μ„ ν™œμš©ν•¨μœΌλ‘œμ¨ 이 κ³Όμ • λ˜ν•œ λ°œμ „μ˜ 여지가 λ§Žλ‹€λŠ” λ°”λ₯Ό μ‹œμ‚¬ν•œλ‹€. λ”°λΌμ„œ λ³Έ μ—°κ΅¬λŠ” λ¨Όμ € CAPT μ‹œμŠ€ν…œ κ°œλ°œμ— μžˆμ–΄ 발음 변이 양상과 언어학적 상관관계λ₯Ό λΆ„μ„ν•˜μ˜€λ‹€. 외ꡭ인 ν™”μžλ“€μ˜ 낭독체 변이 양상과 ν•œκ΅­μ–΄ 원어민 ν™”μžλ“€μ˜ 낭독체 변이 양상을 λŒ€μ‘°ν•˜κ³  μ£Όμš”ν•œ 변이λ₯Ό ν™•μΈν•œ ν›„, 상관관계 뢄석을 ν†΅ν•˜μ—¬ μ˜μ‚¬μ†Œν†΅μ— 영ν–₯을 λ―ΈμΉ˜λŠ” μ€‘μš”λ„λ₯Ό νŒŒμ•…ν•˜μ˜€λ‹€. κ·Έ κ²°κ³Ό, μ’…μ„± μ‚­μ œμ™€ 3쀑 λŒ€λ¦½μ˜ ν˜Όλ™, μ΄ˆλΆ„μ ˆ κ΄€λ ¨ 였λ₯˜κ°€ λ°œμƒν•  경우 ν”Όλ“œλ°± 생성에 μš°μ„ μ μœΌλ‘œ λ°˜μ˜ν•˜λŠ” 것이 ν•„μš”ν•˜λ‹€λŠ” 것이 ν™•μΈλ˜μ—ˆλ‹€. κ΅μ •λœ ν”Όλ“œλ°±μ„ μžλ™μœΌλ‘œ μƒμ„±ν•˜λŠ” 것은 CAPT μ‹œμŠ€ν…œμ˜ μ€‘μš”ν•œ 과제 쀑 ν•˜λ‚˜μ΄λ‹€. λ³Έ μ—°κ΅¬λŠ” 이 κ³Όμ œκ°€ λ°œν™”μ˜ μŠ€νƒ€μΌ λ³€ν™”μ˜ 문제둜 해석이 κ°€λŠ₯ν•˜λ‹€κ³  λ³΄μ•˜μœΌλ©°, 생성적 μ λŒ€ 신경망 (Cycle-consistent Generative Adversarial Network; CycleGAN) κ΅¬μ‘°μ—μ„œ λͺ¨λΈλ§ν•˜λŠ” 것을 μ œμ•ˆν•˜μ˜€λ‹€. GAN λ„€νŠΈμ›Œν¬μ˜ 생성λͺ¨λΈμ€ 비원어민 λ°œν™”μ˜ 뢄포와 원어민 λ°œν™” λΆ„ν¬μ˜ 맀핑을 ν•™μŠ΅ν•˜λ©°, Cycle consistency μ†μ‹€ν•¨μˆ˜λ₯Ό μ‚¬μš©ν•¨μœΌλ‘œμ¨ λ°œν™”κ°„ μ „λ°˜μ μΈ ꡬ쑰λ₯Ό μœ μ§€ν•¨κ³Ό λ™μ‹œμ— κ³Όλ„ν•œ ꡐ정을 λ°©μ§€ν•˜μ˜€λ‹€. λ³„λ„μ˜ νŠΉμ§• μΆ”μΆœ 과정이 없이 ν•„μš”ν•œ νŠΉμ§•λ“€μ΄ CycleGAN ν”„λ ˆμž„μ›Œν¬μ—μ„œ 무감독 λ°©λ²•μœΌλ‘œ 슀슀둜 ν•™μŠ΅λ˜λŠ” λ°©λ²•μœΌλ‘œ, μ–Έμ–΄ ν™•μž₯이 μš©μ΄ν•œ 방법이닀. 언어학적 λΆ„μ„μ—μ„œ λ“œλŸ¬λ‚œ μ£Όμš”ν•œ 변이듀 κ°„μ˜ μš°μ„ μˆœμœ„λŠ” Auxiliary Classifier CycleGAN κ΅¬μ‘°μ—μ„œ λͺ¨λΈλ§ν•˜λŠ” 것을 μ œμ•ˆν•˜μ˜€λ‹€. 이 방법은 기쑴의 CycleGAN에 지식을 μ ‘λͺ©μ‹œμΌœ ν”Όλ“œλ°± μŒμ„±μ„ 생성함과 λ™μ‹œμ— ν•΄λ‹Ή ν”Όλ“œλ°±μ΄ μ–΄λ–€ μœ ν˜•μ˜ 였λ₯˜μΈμ§€ λΆ„λ₯˜ν•˜λŠ” 문제λ₯Ό μˆ˜ν–‰ν•œλ‹€. μ΄λŠ” 도메인 지식이 ꡐ정 ν”Όλ“œλ°± 생성 λ‹¨κ³„κΉŒμ§€ μœ μ§€λ˜κ³  ν†΅μ œκ°€ κ°€λŠ₯ν•˜λ‹€λŠ” μž₯점이 μžˆλ‹€λŠ” 데에 κ·Έ μ˜μ˜κ°€ μžˆλ‹€. λ³Έ μ—°κ΅¬μ—μ„œ μ œμ•ˆν•œ 방법을 ν‰κ°€ν•˜κΈ° μœ„ν•΄μ„œ 27개의 λͺ¨κ΅­μ–΄λ₯Ό κ°–λŠ” 217λͺ…μ˜ 유의미 μ–΄νœ˜ λ°œν™” 65,100개둜 ν”Όλ“œλ°± μžλ™ 생성 λͺ¨λΈμ„ ν›ˆλ ¨ν•˜κ³ , κ°œμ„  μ—¬λΆ€ 및 정도에 λŒ€ν•œ 지각 평가λ₯Ό μˆ˜ν–‰ν•˜μ˜€λ‹€. μ œμ•ˆλœ 방법을 μ‚¬μš©ν•˜μ˜€μ„ λ•Œ ν•™μŠ΅μž 본인의 λͺ©μ†Œλ¦¬λ₯Ό μœ μ§€ν•œ 채 κ΅μ •λœ 발음으둜 λ³€ν™˜ν•˜λŠ” 것이 κ°€λŠ₯ν•˜λ©°, 전톡적인 방법인 μŒλ†’μ΄ 동기식 쀑첩가산 (Pitch-Synchronous Overlap-and-Add) μ•Œκ³ λ¦¬μ¦˜μ„ μ‚¬μš©ν•˜λŠ” 방법에 λΉ„ν•΄ μƒλŒ€ κ°œμ„ λ₯  16.67%이 ν™•μΈλ˜μ—ˆλ‹€.Chapter 1. Introduction 1 1.1. Motivation 1 1.1.1. An Overview of CAPT Systems 3 1.1.2. Survey of existing Korean CAPT Systems 5 1.2. Problem Statement 7 1.3. Thesis Structure 7 Chapter 2. Pronunciation Analysis of Korean Produced by Chinese 9 2.1. Comparison between Korean and Chinese 11 2.1.1. Phonetic and Syllable Structure Comparisons 11 2.1.2. Phonological Comparisons 14 2.2. Related Works 16 2.3. Proposed Analysis Method 19 2.3.1. Corpus 19 2.3.2. Transcribers and Agreement Rates 22 2.4. Salient Pronunciation Variations 22 2.4.1. Segmental Variation Patterns 22 2.4.1.1. Discussions 25 2.4.2. Phonological Variation Patterns 26 2.4.1.2. Discussions 27 2.5. Summary 29 Chapter 3. Correlation Analysis of Pronunciation Variations and Human Evaluation 30 3.1. Related Works 31 3.1.1. Criteria used in L2 Speech 31 3.1.2. Criteria used in L2 Korean Speech 32 3.2. Proposed Human Evaluation Method 36 3.2.1. Reading Prompt Design 36 3.2.2. Evaluation Criteria Design 37 3.2.3. Raters and Agreement Rates 40 3.3. Linguistic Factors Affecting L2 Korean Accentedness 41 3.3.1. Pearsons Correlation Analysis 41 3.3.2. Discussions 42 3.3.3. Implications for Automatic Feedback Generation 44 3.4. Summary 45 Chapter 4. Corrective Feedback Generation for CAPT 46 4.1. Related Works 46 4.1.1. Prosody Transplantation 47 4.1.2. Recent Speech Conversion Methods 49 4.1.3. Evaluation of Corrective Feedback 50 4.2. Proposed Method: Corrective Feedback as a Style Transfer 51 4.2.1. Speech Analysis at Spectral Domain 53 4.2.2. Self-imitative Learning 55 4.2.3. An Analogy: CAPT System and GAN Architecture 57 4.3. Generative Adversarial Networks 59 4.3.1. Conditional GAN 61 4.3.2. CycleGAN 62 4.4. Experiment 63 4.4.1. Corpus 64 4.4.2. Baseline Implementation 65 4.4.3. Adversarial Training Implementation 65 4.4.4. Spectrogram-to-Spectrogram Training 66 4.5. Results and Evaluation 69 4.5.1. Spectrogram Generation Results 69 4.5.2. Perceptual Evaluation 70 4.5.3. Discussions 72 4.6. Summary 74 Chapter 5. Integration of Linguistic Knowledge in an Auxiliary Classifier CycleGAN for Feedback Generation 75 5.1. Linguistic Class Selection 75 5.2. Auxiliary Classifier CycleGAN Design 77 5.3. Experiment and Results 80 5.3.1. Corpus 80 5.3.2. Feature Annotations 81 5.3.3. Experiment Setup 81 5.3.4. Results 82 5.4. Summary 84 Chapter 6. Conclusion 86 6.1. Thesis Results 86 6.2. Thesis Contributions 88 6.3. Recommendations for Future Work 89 Bibliography 91 Appendix 107 Abstract in Korean 117 Acknowledgments 120Docto

    Machine learning approaches to improving mispronunciation detection on an imbalanced corpus

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    This thesis reports the investigations into the task of phone-level pronunciation error detection, the performance of which is heavily affected by the imbalanced distribution of the classes in a manually annotated data set of non-native English (Read Aloud responses from the TOEFL Junior Pilot assessment). In order to address problems caused by this extreme class imbalance, two machine learning approaches, cost-sensitive learning and over-sampling, are explored to improve the classification performance. Specifically, approaches which assigned weights inversely proportional to class frequencies and synthetic minority over-sampling technique (SMOTE) were applied to a range of classifiers using feature sets that included information about the acoustic signal, the linguistic properties of the utterance, and word identity. Empirical experiments demonstrate that both balancing approaches lead to a substantial performance improvement (in terms of f1 score) over the baseline on this extremely imbalanced data set. In addition, this thesis also discusses which features are the most important and which classifiers are most effective for the task of identifying phone-level pronunciation errors in non-native speech

    MISPRONUNCIATION DETECTION AND DIAGNOSIS IN MANDARIN ACCENTED ENGLISH SPEECH

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    This work presents the development, implementation, and evaluation of a Mispronunciation Detection and Diagnosis (MDD) system, with application to pronunciation evaluation of Mandarin-accented English speech. A comprehensive detection and diagnosis of errors in the Electromagnetic Articulography corpus of Mandarin-Accented English (EMA-MAE) was performed by using the expert phonetic transcripts and an Automatic Speech Recognition (ASR) system. Articulatory features derived from the parallel kinematic data available in the EMA-MAE corpus were used to identify the most significant articulatory error patterns seen in L2 speakers during common mispronunciations. Using both acoustic and articulatory information, an ASR based Mispronunciation Detection and Diagnosis (MDD) system was built and evaluated across different feature combinations and Deep Neural Network (DNN) architectures. The MDD system captured mispronunciation errors with a detection accuracy of 82.4%, a diagnostic accuracy of 75.8% and a false rejection rate of 17.2%. The results demonstrate the advantage of using articulatory features in revealing the significant contributors of mispronunciation as well as improving the performance of MDD systems

    Spoken content retrieval: A survey of techniques and technologies

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    Speech media, that is, digital audio and video containing spoken content, has blossomed in recent years. Large collections are accruing on the Internet as well as in private and enterprise settings. This growth has motivated extensive research on techniques and technologies that facilitate reliable indexing and retrieval. Spoken content retrieval (SCR) requires the combination of audio and speech processing technologies with methods from information retrieval (IR). SCR research initially investigated planned speech structured in document-like units, but has subsequently shifted focus to more informal spoken content produced spontaneously, outside of the studio and in conversational settings. This survey provides an overview of the field of SCR encompassing component technologies, the relationship of SCR to text IR and automatic speech recognition and user interaction issues. It is aimed at researchers with backgrounds in speech technology or IR who are seeking deeper insight on how these fields are integrated to support research and development, thus addressing the core challenges of SCR

    Phonologically-Informed Speech Coding for Automatic Speech Recognition-based Foreign Language Pronunciation Training

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    Automatic speech recognition (ASR) and computer-assisted pronunciation training (CAPT) systems used in foreign-language educational contexts are often not developed with the specific task of second-language acquisition in mind. Systems that are built for this task are often excessively targeted to one native language (L1) or a single phonemic contrast and are therefore burdensome to train. Current algorithms have been shown to provide erroneous feedback to learners and show inconsistencies between human and computer perception. These discrepancies have thus far hindered more extensive application of ASR in educational systems. This thesis reviews the computational models of the human perception of American English vowels for use in an educational context; exploring and comparing two types of acoustic representation: a low-dimensionality linguistically-informed formant representation and more traditional Mel frequency cepstral coefficients (MFCCs). We first compare two algorithms for phoneme classification (support vector machines and long short-term memory recurrent neural networks) trained on American English vowel productions from the TIMIT corpus. We then conduct a perceptual study of non-native English vowel productions perceived by native American English speakers. We compare the results of the computational experiment and the human perception experiment to assess human/model agreement. Dissimilarities between human and model classification are explored. More phonologically-informed audio signal representations should create a more human-aligned, less L1-dependent vowel classification system with higher interpretability that can be further refined with more phonetic- and/or phonological-based research. Results show that linguistically-informed speech coding produces results that better align with human classification, supporting use of the proposed coding for ASR-based CAPT

    Methods for pronunciation assessment in computer aided language learning

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    Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer Science, 2011.Cataloged from PDF version of thesis.Includes bibliographical references (p. 149-176).Learning a foreign language is a challenging endeavor that entails acquiring a wide range of new knowledge including words, grammar, gestures, sounds, etc. Mastering these skills all require extensive practice by the learner and opportunities may not always be available. Computer Aided Language Learning (CALL) systems provide non-threatening environments where foreign language skills can be practiced where ever and whenever a student desires. These systems often have several technologies to identify the different types of errors made by a student. This thesis focuses on the problem of identifying mispronunciations made by a foreign language student using a CALL system. We make several assumptions about the nature of the learning activity: it takes place using a dialogue system, it is a task- or game-oriented activity, the student should not be interrupted by the pronunciation feedback system, and that the goal of the feedback system is to identify severe mispronunciations with high reliability. Detecting mispronunciations requires a corpus of speech with human judgements of pronunciation quality. Typical approaches to collecting such a corpus use an expert phonetician to both phonetically transcribe and assign judgements of quality to each phone in a corpus. This is time consuming and expensive. It also places an extra burden on the transcriber. We describe a novel method for obtaining phone level judgements of pronunciation quality by utilizing non-expert, crowd-sourced, word level judgements of pronunciation. Foreign language learners typically exhibit high variation and pronunciation shapes distinct from native speakers that make analysis for mispronunciation difficult. We detail a simple, but effective method for transforming the vowel space of non-native speakers to make mispronunciation detection more robust and accurate. We show that this transformation not only enhances performance on a simple classification task, but also results in distributions that can be better exploited for mispronunciation detection. This transformation of the vowel is exploited to train a mispronunciation detector using a variety of features derived from acoustic model scores and vowel class distributions. We confirm that the transformation technique results in a more robust and accurate identification of mispronunciations than traditional acoustic models.by Mitchell A. Peabody.Ph.D
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