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) - ![uploads/6762/language_and_image_processing_with_ai_(1).png](uploads/6762/language_and_image_processing_with_ai_(1).png) -hg - Our Website will highlight the pros and cons, how it can be used and how much it can impact our daily lives. The field of language and image processing explores how artificial intelligence (AI) understands and uses natural language and images. This includes a wide range of applications, such as virtual assistants and image recognition systems. - We hope you find our content informativ and can learn something new about artificial intelligence:) -- Created by Riona & Sophie - - text sources: https://www.researchgate.net/post/Which_language_is_used_for_image_processing_and_difference_between_digital_image_and_digital_image_processing#:~:text=C%2FC%2B%2B%3A%20These%20languages,Imaging%20(JAI)%20and%20ImageJ. https://medium.com/@eparlar/which-language-is-more-advantageous-to-use-in-image-processing-45e29577b6b4 Image: generated by AI |