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Deep learning-based color holographic microscopy

机译:基于深度学习的颜色全息显微镜

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We report a framework based on a generative adversarial network that performs high-fidelity color image reconstruction using a single hologram of a sample that is illuminated simultaneously by light at three different wavelengths. The trained network learns to eliminate missing-phase-related artifacts, and generates an accurate color transformation for the reconstructed image. Our framework is experimentally demonstrated using lung and prostate tissue sections that are labeled with different histological stains. This framework is envisaged to be applicable to point-of-care histopathology and presents a significant improvement in the throughput of coherent microscopy systems given that only a single hologram of the specimen is required for accurate color imaging.
机译:我们报告了一种基于生成的对冲网络的框架,该网络使用三种不同波长的光照射的样本的单个全息图来执行高保真彩色图像重建。 训练有素的网络学习消除与丢失相位相关的工件,并为重建图像产生准确的变色变换。 我们的框架使用标记为不同的组织学污渍的肺和前列腺组织切片进行实验证明。 该框架设想适用于护理点组织病理学,并呈现相干显微镜系统的吞吐量的显着改善,因为只需要样品的单个全息图来准确的彩色成像。

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