改进的SinGAN单样本机场跑道破坏图像生成

JinYu Wang, ChangGong Zhang, HaiTao Yang
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引用次数: 0

摘要

目的:解决机场跑道破坏图像数据难以获取的问题。目的:介绍单样本生成对抗网络算法SinGAN。方法:针对SinGAN在图像真实感和多样性生成方面的不足,提出了一种基于高斯误差线性单元GELU和高效通道注意机制ECANet相结合的改进算法。结果:实验表明,其生成的图像结果主观上优于SinGAN及其轻量级算法ConSinGAN,该模型在图像生成的质量和多样性上都能获得有效的平衡。结论:采用三个客观评价指标对算法效果进行了验证,结果表明,与SinGAN相比,本文方法有效地提高了生成效果,SIFID指标降低了46.67%。
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Improved SinGAN for Single-Sample Airport Runway Destruction Image Generation
Aims: To solve the problem of difficult acquisition of airport runway destruction image data. Objectives: This paper introduces SinGAN, a single-sample generative adversarial network algorithm. Methods: To address the shortcomings of SinGAN in image realism and diversity generation, an improved algorithm based on the combination of Gaussian error linear unit GELU and efficient channel attention mechanism ECANet is proposed Results: Experiments show that its generated image results are subjectively better than SinGAN and its lightweight algorithm ConSinGAN, and the model can obtain an effective balance in both quality and diversity of image generation. Conclusion: The algorithm effect is also verified using three objective evaluation metrics, and the results show that the method in this paper effectively improves the generation effect compared with SinGAN, in which the SIFID metric is reduced by 46.67%.
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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