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High-quality frame interpolation in computer generated holographic movies using coherent neural networks with a hybrid learning method

机译:使用相干神经网络和混合学习方法在计算机生成的全息电影中进行高质量帧内插

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摘要

Computer generated holograms (CGHs) are widely used in optical tweezers, which will be employed in various research fields. We previously proposed an efficient generation method of CGH movies based on frame interpolation using coherent neural networks (CNNs) to reduce the high calculation cost of three-dimensional CGHs. At the same time, however, we also found that the quality observed in the interpolated CGH images needed to be improved even further so that the method could be accepted for general use. We report a successful error reduction in interpolated images by developing a new learning method of CNNs. We reduce the error by combining locally connected correlation learning and steepest descent learning in a sequential manner.
机译:计算机生成的全息图(CGH)广泛用于光学镊子中,将在各种研究领域中使用。我们先前提出了一种使用相干神经网络(CNN)基于帧插值的CGH电影的高效生成方法,以降低三维CGH的高计算成本。但是,与此同时,我们还发现,在插值CGH图像中观察到的质量需要进一步提高,以便该方法可以被普遍接受。我们报告通过开发一种新的CNN学习方法,成功减少了插值图像中的错误。通过以顺序方式组合本地连接的相关学习和最速下降学习,我们减少了错误。

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