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Night colorize: fully convolutional colorization network for low-light images

机译:夜间颜色:低光图像完全卷积的彩色网络

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An end-to-end network is proposed for low-light images natural colorization using a deep fully convolutional architecture. The network consists of a downsampling sub-network and an upsampling sub-network. The downsampling component extracts the high-level features of the input images, while the upsampling component transforms the high-level features to color. A skip connection is used to transmit low layer information to the deep layer so as to improve the colorization accuracy. Gamma correction and random noise augmentation are used to improve the network adaptability to low-light images. The trained model can naturally colorize low-light images without any reference image or artificial scribbles.
机译:提出了一种使用深度完全卷积架构的低光图像自然色度的端到端网络。该网络由下采样子网络和上采样子网组成。下采样组件提取输入图像的高级功能,而上采样组件将高级功能转换为颜色。跳过连接用于将低层信息传输到深层,以提高色度精度。 Gamma校正和随机噪声增强用于提高对低光图像的网络适应性。训练的模型可以自然地着色低光图像而没有任何参考图像或人工涂鸦。

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