Even though Generative Adversarial Networks (GANs) have shown a remarkable ability to generate high-quality images, GANs do not always guarantee the generation of photorealistic images. Occasionally, they generate images that have defective or unnatural objects, which are referred to as 'artifacts'. Research to investigate why these artifacts emerge and how they can be detected and removed has yet to be sufficiently carried out. To analyze this, we first hypothesize that rarely activated neurons and frequently activated neurons have different purposes and responsibilities for the progress of generating images. In this study, by analyzing the statistics and the roles for those neurons, we empirically show that rarely activated neurons are related to the failure results of making diverse objects and inducing artifacts. In addition, we suggest a correction method, called 'Sequential Ablation', to repair the defective part of the generated images without high computational cost and manual efforts.
翻译:尽管基因反转网络(GANs)已经展示出制作高质量图像的非凡能力,但GANs并非总能保证光现实图像的生成。有时,它们产生的图像有缺陷或反常的物体,被称为“artifacts ” 。 调查这些文物为何出现以及如何探测和移除这些文物的研究尚未充分展开。 为了分析这一点, 我们首先假设, 很少激活神经元和经常激活神经元对生成图像的进展有着不同的目的和责任。 在这项研究中, 通过分析统计数据和这些神经元的作用, 我们实验性地表明, 很少被激活的神经元与制作不同物体和诱导工艺品的失败结果相关。 此外, 我们建议一种纠正方法, 叫做“ 序列消化法 ”, 在不花费高计算成本和人工努力的情况下, 来修复生成的图像的缺陷部分。