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近年来,随着人工智能及大模型技术的进步,人工智能生成内容(Artificial Intelligence Generated Content,AIGC)技术快速发展,并在不同领域得到应用,已经成为一种重要的数字内容新质生产力。本文首先从AIGC技术的概念、发展阶段、当前技术和在各个领域的应用以及AIGC的产业链(包括基础层、中间层和应用层)等方面进行了分析。随后,探讨了AIGC技术的优势和当前面临的挑战,例如提高内容的质量、保持创造力、解决道德和隐私问题以及克服技术限制。最后,对AIGC的未来研究和应用方向进行了展望。
Abstract:With the progress of artificial intelligence and big model technology in recent years, artificial intelligencegenerated content(AIGC) technology has been developed rapidly and applied in various fields. AIGC technology has become an important new quality productive force for digital content production. In this paper, the concept of AIGC technology, its development stage, current technologies and applications in various fields, and the industrial chain of AIGC(including the base layer, intermediate layer, and application layer) were analyzed. The advantages and challenges of AIGC were discussed, such as improving the quality of content, maintaining creativity, solving ethical and privacy issues, and overcoming technological limitations. Finally, the future research and application directions of AIGC were envisioned.
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基本信息:
DOI:10.19370/j.cnki.cn10-1886/ts.2024.04.001
中图分类号:TP18
引用信息:
[1]王泽轩,陈亚军.AIGC技术发展与应用进展[J].印刷与数字媒体技术研究,2024,No.231(04):1-14+96.DOI:10.19370/j.cnki.cn10-1886/ts.2024.04.001.
基金信息:
国家自然科学基金(No.62273273); 陕西省重点研发计划项目(No.2023-YBNY-203,No.2023-YBNY-231)
2024-08-10
2024-08-10