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Artificial Intelligence Supported Material Design for Tailored Image Transformations

机译:人工智能支持的定制图像转换材料设计

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Neural network based classifiers have been shown to suffer from image perturbations in the form of 2-dimensional transformations. These transformations lack physical constraints making them less of a practical concern and more of a theoretical interest. This paper pushes to produce 3-dimensional materials to mimic these 2-dimensional image transformations by using artificial neural networks to regress material parameters. The neural networks are trained on simulation data from full-wave simulations and physics-based ray tracing simulations. Two neural network models are developed to regress material parameters of a common transformation optics solution, and a Gaussian blur, respectively. The model trained for the transformation optics solution was able to find a unique material solution whose simulated waveform generally matches an analytical solution. The model trained for the Gaussian blur was unable to find an adequate material solution for the image transformation possibly due to the constraints placed on the regression by the ray tracing simulation. Finally, a framework is proposed to combine the ray tracing and full-wave simulations to produce more accurate data, enabling a better regression of material parameters for image transformations.
机译:已经显示出基于神经网络的分类器遭受二维变换形式的图像扰动。这些转换缺少物理约束,因此它们在实践中变得不那么重要,而在理论上却更具吸引力。本文力求通过使用人工神经网络回归材料参数来生产3维材料来模拟这些2维图像转换。在全波模拟和基于物理学的光线跟踪模拟的模拟数据上训练神经网络。开发了两个神经网络模型以分别回归常见变换光学解决方案和高斯模糊的材料参数。经过培训的用于转换光学解决方案的模型能够找到独特的材料解决方案,其模拟波形通常与分析解决方案相匹配。经过高斯模糊训练的模型可能无法找到足够的材料解决方案来进行图像转换,这可能是由于光线跟踪模拟对回归的约束所致。最后,提出了一个框架,将光线跟踪和全波模拟相结合以生成更准确的数据,从而可以更好地回归材料参数以进行图像转换。

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