Subanana Enterprise Solution

AI Speech-to-Text

βœ…   Cantonese to written (書青θͺž) or spoken (口θͺž) Chinese. Also supports English, Mandarin, and 80+ languages
βœ…   Cloud API and On-Premises deployment options available
βœ…   AI model release: Oct 2022, last updated: Sep 2024

Mentioned and Trusted By

Our Strengths

Industry-leading Accuracy 🟒 Diversified large-scale training databases
🟒 We encourage our partner to do a comparative accuracy trial with other solutions available on the market
Reduced Proofreading Costs
Cantonese to Written Chinese 🟒 Cantonese to written chinese transcription has always been the most wanted solution, and we deliver
🟒 Seamless integration with NLP applications
Enhanced applicability
Lossy audio? OK! 🟒 Support radio sources and lossy audio formats
🟒 Support audio with background noises and multiple speakers sources
Enhanced Accuracy
Production Ready 🟒 Customer data pre-training is not necessary (optional)
🟒 Our all-rounded AI model is able to provide the best possible outcome under different usage scenarios
Reduced setup costs
Multi-language Detection 🟒 Automatically identifies audios in different languages
🟒 Effective transcription of code-mixing and slangs in Cantonese to target language
Enhanced accuracy
Speaker Segmentation 🟒 Able to identify multiple speakers in mono recordings
🟒 Pre-inputting speaker's data is not required (optional)
Enhance applicability
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API integration

Developers can utilize our speech recognition API to automatically transcribe recorded audio with timecodes. Reduce manual transcription efforts and boosts team efficiency today!

Applications

Meeting Minutes
Transcribe daily meeting minutes into documents for record-keeping and content searches
Audio Transcription Transform audio into text paragraphs, drastically reduces screening and searching time
CS Call Screening
Review on customer service performance, financial compliance, and risk management
Voice Input Support offline voice inputting with desktop and mobile devices
Video Captioning Drastically reduces human resources required for TV program captioning