PSIG-GAN: A Parameterized Synthetic Image Generator Optimized via Non-Differentiable GAN

Hussain I. Khajanchi, Jake Bezold, M. Kilcher, Alexander Benasutti, Brian Rentsch, Larry Pearlstein, S. Maxwell
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Abstract

Deep convolutional neural networks have been successfully deployed by large, well-funded teams, but their wider adoption is often limited by the cost and schedule ramifications of their requirement for massive amounts of labeled data. We address this problem through the use of a parameterized synthetic image generator. Our approach is particularly novel in that we have been able to fine tune the generator’s parameters through the use of a generative adversarial network. We describe our approach, and present results that demonstrate its potential benefits. We demonstrate the PSIG-GAN by creating images for training a DCNN to detect the existence and location of weeds in lawn grass.
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PSIG-GAN:一个基于不可微GAN优化的参数化合成图像生成器
深度卷积神经网络已经被资金充足的大型团队成功部署,但其广泛采用往往受到成本和大量标记数据需求的进度影响的限制。我们通过使用一个参数化的合成图像生成器来解决这个问题。我们的方法特别新颖,因为我们已经能够通过使用生成对抗网络来微调生成器的参数。我们描述了我们的方法,并提出了证明其潜在好处的结果。我们通过创建图像来训练DCNN来检测草坪草中杂草的存在和位置来演示PSIG-GAN。
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