Research on Image Recognition Technology Based on Artificial Intelligence
DOI:
https://doi.org/10.54097/cpl.v11i1.10190Keywords:
Artificial intelligence; Image recognition; Pretreatment; Technology.Abstract
With the rapid development of China's economy in recent years, the Internet and computers are becoming more and more popular, and they play a great role in our lives. At present, image recognition technology is widely used in various fields such as work, life, and learning, and various industries have also achieved more efficient development due to artificial intelligence image recognition technology. By analyzing and studying the technical principles of image recognition, the advantages of its intelligence, convenience, and practicality were elaborated. The main workflow of image recognition technology was analyzed, and the key technologies in its workflow were explained in detail. Finally, the development prospects of artificial intelligence image recognition were discussed, hoping to bring more practical value to the development and application of image recognition technology.
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