--- language: - en license: apache-2.0 size_categories: - 1K>> from datasets import load_dataset >>> test_set = load_dataset("mispeech/speechocean762", split="test") >>> len(test_set) 2500 >>> next(iter(test_set)) {'file': 'WAVE/SPEAKER0003/000030012.WAV', 'audio': { 'path': 'WAVE/SPEAKER0003/000030012.WAV', 'array': array([-0.00119019, -0.00500488, -0.00283813, ..., 0.00274658, 0. , 0.00125122]), 'sampling_rate': 16000}, 'text': 'MARK IS GOING TO SEE ELEPHANT', 'speaker': '0003', 'gender': 'm', 'age': 6, 'accuracy': 9, 'fluency': 9, 'prosodic': 9, 'total': 9, 'words': {'text': ['MARK', 'IS', 'GOING', 'TO', 'SEE', 'ELEPHANT'], 'accuracy': [10, 10, 10, 10, 10, 10], 'stress': [10, 10, 10, 10, 10, 10], 'total': [10, 10, 10, 10, 10, 10], 'phones': [['M', 'AA0', 'R', 'K'], ['IH0', 'Z'], ['G', 'OW0', 'IH0', 'NG'], ['T', 'UW0'], ['S', 'IY0'], ['EH1', 'L', 'IH0', 'F', 'AH0', 'N', 'T']], 'phones-accuracy': [[2.0, 2.0, 1.8, 2.0], [2.0, 1.8], [2.0, 2.0, 2.0, 2.0], [2.0, 2.0], [2.0, 2.0], [2.0, 2.0, 2.0, 2.0, 2.0, 2.0, 2.0]], 'mispronunciations': ['[]', '[]', '[]', '[]', '[]', '[]']}} ``` ## The scoring metric The experts score at three levels: phoneme-level, word-level, and sentence-level. ### Sentence level Score the accuracy, fluency, completeness and prosodic at the sentence level. #### Accuracy Score range: 0 - 10 * 9-10: The overall pronunciation of the sentence is excellent, with accurate phonology and no obvious pronunciation mistakes * 7-8: The overall pronunciation of the sentence is good, with a few pronunciation mistakes * 5-6: The overall pronunciation of the sentence is understandable, with many pronunciation mistakes and accent, but it does not affect the understanding of basic meanings * 3-4: Poor, clumsy and rigid pronunciation of the sentence as a whole, with serious pronunciation mistakes * 0-2: Extremely poor pronunciation and only one or two words are recognizable #### Completeness Score range: 0.0 - 1.0 The percentage of the words with good pronunciation. #### Fluency Score range: 0 - 10 * 8-10: Fluent without noticeable pauses or stammering * 6-7: Fluent in general, with a few pauses, repetition, and stammering * 4-5: the speech is a little influent, with many pauses, repetition, and stammering * 0-3: intermittent, very influent speech, with lots of pauses, repetition, and stammering #### Prosodic Score range: 0 - 10 * 9-10: Correct intonation at a stable speaking speed, speak with cadence, and can speak like a native * 7-8: Nearly correct intonation at a stable speaking speed, nearly smooth and coherent, but with little stammering and few pauses * 5-6: Unstable speech speed, many stammering and pauses with a poor sense of rhythm * 3-4: Unstable speech speed, speak too fast or too slow, without the sense of rhythm * 0-2: Poor intonation and lots of stammering and pauses, unable to read a complete sentence ### Word level Score the accuracy and stress of each word's pronunciation. #### Accuracy Score range: 0 - 10 * 10: The pronunciation of the word is perfect * 7-9: Most phones in this word are pronounced correctly but have accents * 4-6: Less than 30% of phones in this word are wrongly pronounced * 2-3: More than 30% of phones in this word are wrongly pronounced. In another case, the word is mispronounced as some other word. For example, the student mispronounced the word "bag" as "bike" * 1: The pronunciation is hard to distinguish * 0: no voice #### Stress Score range: {5, 10} * 10: The stress is correct, or this is a mono-syllable word * 5: The stress is wrong ### Phoneme level Score the pronunciation goodness of each phoneme within the words. Score range: 0-2 * 2: pronunciation is correct * 1: pronunciation is right but has a heavy accent * 0: pronunciation is incorrect or missed For the phones with an accuracy score lower than 0.5, an extra "mispronunciations" indicates which is the most likely phoneme that the current phone was actually pronounced. An example: ```json { "text": "LISA", "accuracy": 5, "phones": ["L", "IY1", "S", "AH0"], "phones-accuracy": [0.4, 2, 2, 1.2], "mispronunciations": [ { "canonical-phone": "L", "index": 0, "pronounced-phone": "D" } ], "stress": 10, "total": 6 } ``` ## Citation Please cite our paper if you find this work useful: ```bibtext @inproceedings{speechocean762, title={speechocean762: An Open-Source Non-native English Speech Corpus For Pronunciation Assessment}, booktitle={Proc. Interspeech 2021}, year=2021, author={Junbo Zhang, Zhiwen Zhang, Yongqing Wang, Zhiyong Yan, Qiong Song, Yukai Huang, Ke Li, Daniel Povey, Yujun Wang} } ```