Using Artificial Intelligence to Refine the Implementation Trajectory of Digital Image Processing Technology

Chen Li, Zengyi Huang
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Abstract

Artificial intelligence introduces a fresh research perspective to digital image processing. However, its integration into the curriculum of colleges and universities for teaching digital image processing remains scarce. This lack of incorporation results in outdated course content, reliance on singular teaching methods, and simplistic course experiments, consequently impeding effective teaching and hindering the development of well-rounded and innovative individuals. Digital image processing technology expands the horizons of communication engineering, facilitating more convenient modes of communication for people. For instance, video calls and photo transmissions diversify everyday communication methods, transcending the constraints of time and space by enabling online meetings and fostering enhanced communication possibilities. Despite these advancements, numerous challenges and methodologies merit thorough exploration. Therefore, this paper aims to comprehensively grasp both traditional and deep learning approaches to digital image processing, enhancing practical project proficiency and fostering scientific research exploration capabilities, thus serving as a valuable reference for similar research endeavors.
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利用人工智能完善数字图像处理技术的实施轨迹
人工智能为数字图像处理引入了全新的研究视角。然而,将其纳入高等院校数字图像处理教学课程的情况仍然很少。缺乏融入导致课程内容陈旧、教学方法单一、课程实验简单化,从而阻碍了有效教学,阻碍了全面创新人才的培养。数字图像处理技术拓展了通信工程的视野,为人们提供了更加便捷的通信方式。例如,视频通话和照片传输使日常交流方式多样化,通过在线会议超越了时间和空间的限制,提高了交流的可能性。尽管取得了这些进步,但仍有许多挑战和方法值得深入探讨。因此,本文旨在全面掌握数字图像处理的传统方法和深度学习方法,提高实际项目的熟练程度和科研探索能力,从而为类似研究工作提供有价值的参考。
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