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IMAGE HARMONIZATION FOR DEEP LEARNING MODEL OPTIMIZATION

机译:深度学习模型优化的图像协调

摘要

Techniques are described for optimizing deep learning model performance using image harmonization as a pre-processing step. According to an embodiment, a method comprises decomposing, by a system operatively coupled to a processor, an input image into sub-images. The method further comprises harmonizing the sub-images with corresponding reference sub-images of at least one reference image based on two or more different statistical values respectively calculated for the sub-images and the corresponding reference-sub images, resulting in transformation of the sub-images into modified sub-images images. In some implementations, the modified sub-images can be combined into a harmonized image having a more similar appearance to the at least one reference image relative to the input image. In other implementations, harmonized images and/or modified sub-images generated using these techniques can be used as ground-truth training samples for training one or more deep learning model to transform input images with appearance variations into harmonized images.
机译:描述了使用图像协调作为预处理步骤优化深度学习模型性能的技术。根据一个实施例,一种方法包括通过可操作地耦合到处理器的系统分解输入图像到子图像中。该方法还包括:基于分别计算子图像和相应的参考子图像的两个或更多个不同的统计值,将具有至少一个参考图像的对应参考子图像的子图像协调,导致子图像的转换 - 模拟修改后的子图像图像。在一些实施方式中,可以将修改的子图像组合成相对于输入图像的至少一个参考图像具有更类似的外观的谐波图像。在其他实施方式中,使用这些技术生成的谐波图像和/或修改的子图像可以用作训练一个或多个深度学习模型的地面真理训练样本,以将输入图像转换为谐波的图像的外观变化。

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