GAN: A Novel Approach for Cartoonizing Real Images

Sushmitha P,Gururaj Hanchinamani, Lalitha Madanbhavi,Vishwanath P Baligar

2023 Third International Conference on Ubiquitous Computing and Intelligent Information Systems (ICUIS)(2023)

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摘要
Recent years have seen significant advancements in image processing, especially in transforming authentic images into cartoon-like visualizations. This study introduces a new technique for creating high-quality cartoon images that simulate hand-drawn illustrations using a robust framework called Generative Adversarial Networks. The proposed method integrates generative adversarial networks' capabilities with unique loss function and style transfer approaches to achieve precise and visually appealing cartoon-styled outcomes. The loss function combines adversarial and content-based losses to capture crucial elements while maintaining the desired cartoon-like appearances. Additional components such as style transfer and edge detection enhance the cartoonization process. Based on experiments conducted on several datasets, the proposed strategy has proven effective and adaptable in producing high-quality cartoon images that retain the artistic essence and accurately depict the original data. This research has the potential to benefit various applications, including character design, animation, and digital storytelling, by providing artists and designers with a powerful tool for converting real-world pictures into fascinating cartoon renderings. Moreover, this work offers insightful guidance for professionals and researchers interested in cartoonification and its related applications.
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关键词
Generative adversarial network (GAN),deep learning,computer vision,cartoonization,image processing,style transfer
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