All-Lingo: Efficient Summarization and Multilingual Translation
Abstract
This work demonstrates “AllLingo.F1F4”, a real- time language translation system with capabilities such as summarization, OCR, and speech synthesis. It is constructed with today's tools and can support over 40 languages, employing various means of information input such as text, speech, and images. We demonstrate that this system provides accurate and handy real-time translation experiences. We strive to assist in developing intelligent, friendly learning, communication, and accessibility translation tools.
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