Published April 30, 2026
| Version v1
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ROBOTIC TRANSLATION: TECHNOLOGIES, CHALLENGES AND FUTURE DIRECTIONS
Description
This article explores the concept of robotic translation, which integrates machine translation technologies with robotics and artificial intelligence systems. It examines the evolution of translation technologies, the role of neural networks, and the implementation of translation systems in robotic platforms. The study highlights key challenges such as linguistic ambiguity, cultural context, and real-time processing limitations. Furthermore, the paper discusses future trends, including multimodal translation and human-robot interaction.
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References
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