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{"id":1313,"datatype":"1","titleimg":"https://bj-oss-datatang-03.oss-cn-beijing.aliyuncs.com/asset/productNew/nexdata/APY230729001.jpg?Expires=4102329599&OSSAccessKeyId=LTAI8NWs2pDolLNH&Signature=Mn%2FWpZ23VUI6IkGD1KZJHv9Vrag%3D","type1":"165","type1str":null,"type2":"165","type2str":null,"dataname":"104 Hours - Portuguese(Brazil) Spontaneous Dialogue Telephony speech dataset","datazy":[{"title":"Format","value":"8kHz 8bit, a-law/u-law pcm, mono channel"},{"title":"Content category","value":"Dialogue based on given topics"},{"title":"Recording condition","value":"Low background noise (indoor)"},{"title":"Recording device","value":"Telephony"},{"title":"Country","value":"Brazil(BRA)"},{"title":"Language(Region) Code","value":"pt-BR"},{"title":"Language","value":"Portuguese"},{"title":"Speaker","value":"118 people in total, 54% male and 46% female"},{"title":"Features of annotation","value":"Transcription text, timestamp, speaker ID, gender, noise"},{"title":"Accuracy rate","value":"Word accuracy rate(WAR) 98%"}],"datatag":"Portuguese,Brazil,Conversational,Telephony","technologydoc":null,"downurl":null,"datainfo":"","standard":null,"dataylurl":null,"flag":null,"publishtime":null,"createby":null,"createtime":null,"ext1":null,"samplestoreloc":null,"hosturl":null,"datasize":null,"industryPlan":null,"keyInformation":"","samplePresentation":[["mp3","https://bj-oss-datatang-03.oss-cn-beijing.aliyuncs.com/filesInfoUpload/data/apps/damp/temp/ziptemp/APY230729001_demo1711101632248/APY230729001_demo/0001_001_telephone-6.wav?Expires=4102329599&OSSAccessKeyId=LTAI8NWs2pDolLNH&Signature=11y9moGVYprmh8l5Xn2mb%2FDEEdI%3D","/data/apps/damp/temp/ziptemp/APY230729001_demo1711101632248/APY230729001_demo/0001_001_telephone-6.wav","Eu lembro que tinha algumas pessoas, e também lembro que eu estava montado numa tartaruga gigante."],["mp3","https://bj-oss-datatang-03.oss-cn-beijing.aliyuncs.com/filesInfoUpload/data/apps/damp/temp/ziptemp/APY230729001_demo1711101632248/APY230729001_demo/0001_001_telephone-5.wav?Expires=4102329599&OSSAccessKeyId=LTAI8NWs2pDolLNH&Signature=q40l%2FgvY2qNE8MDyJm0Y8pMeIzg%3D","/data/apps/damp/temp/ziptemp/APY230729001_demo1711101632248/APY230729001_demo/0001_001_telephone-5.wav","E as carteiras eram ilhas, eu não lembro quem estava lá."],["mp3","https://bj-oss-datatang-03.oss-cn-beijing.aliyuncs.com/filesInfoUpload/data/apps/damp/temp/ziptemp/APY230729001_demo1711101632248/APY230729001_demo/0001_001_telephone-2.wav?Expires=4102329599&OSSAccessKeyId=LTAI8NWs2pDolLNH&Signature=HzwdHp4NF4mk6osjVhsHpaNx1BM%3D","/data/apps/damp/temp/ziptemp/APY230729001_demo1711101632248/APY230729001_demo/0001_001_telephone-2.wav","eu lembro de ter sonhado, que eu estava na minha, é, no meu ensino fundamental, na sala do meu ensino fundamental."],["mp3","https://bj-oss-datatang-03.oss-cn-beijing.aliyuncs.com/filesInfoUpload/data/apps/damp/temp/ziptemp/APY230729001_demo1711101632248/APY230729001_demo/0001_001_telephone-1.wav?Expires=4102329599&OSSAccessKeyId=LTAI8NWs2pDolLNH&Signature=cEwdlDOVSO6XvZEGc1TgUuhXJGI%3D","/data/apps/damp/temp/ziptemp/APY230729001_demo1711101632248/APY230729001_demo/0001_001_telephone-1.wav","eu acabo misturando muita fantasia, muitas loucuras. 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Portuguese(Brazil) Spontaneous Dialogue Telephony speech dataset, collected from dialogues based on given topics, covering 20+ domains. Transcribed with text content, speaker's ID, gender, age and other attributes. Our dataset was collected from extensive and diversify speakers(118 native speakers), geographicly speaking, enhancing model performance in real and complex tasks. Quality tested by various AI companies. We strictly adhere to data protection regulations and privacy standards, ensuring the maintenance of user privacy and legal rights throughout the data collection, storage, and usage processes, our datasets are all GDPR, CCPA, PIPL complied.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
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RussianChildSpontaneousSpeech
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audio data dataset conversational asr data spanish mexican
French(Canada) Spontaneous Dialogue Smartphone speech dataset, collected from dialogues based on given topics, covering 20+ domains. Transcribed with text content, speaker's ID, gender, age and other attributes. Our dataset was collected from extensive and diversify speakers(126 native speakers), geographicly speaking, enhancing model performance in real and complex tasks. Quality tested by various AI companies. We strictly adhere to data protection regulations and privacy standards, ensuring the maintenance of user privacy and legal rights throughout the data collection, storage, and usage processes, our datasets are all GDPR, CCPA, PIPL complied.
audio data dataset conversational asr data french Canadian
Portuguese(Portugal) Spontaneous Dialogue Smartphone speech dataset, collected from dialogues based on given topics, covering 20+ domains. Transcribed with text content, speaker's ID, gender, age and other attributes. Our dataset was collected from extensive and diversify speakers(124 native speakers), geographicly speaking, enhancing model performance in real and complex tasks. Quality tested by various AI companies. We strictly adhere to data protection regulations and privacy standards, ensuring the maintenance of user privacy and legal rights throughout the data collection, storage, and usage processes, our datasets are all GDPR, CCPA, PIPL complied.
audio data dataset conversational asr data PortugueseEuropean
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