一种图像颜色增强的学习排序方法

Jianzhou Yan, Stephen Lin, S. B. Kang, Xiaoou Tang
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引用次数: 70

摘要

我们提出了一种机器学习排序方法来自动增强照片的颜色。与以前的技术不同,我们的方法是在人类用户调整前后对图像进行训练,我们的方法考虑了增强过程中采取的中间步骤,这些步骤提供了关于人的颜色偏好的详细信息。为了利用这些数据,我们将颜色增强任务制定为一个学习排序问题,其中使用有序的图像对进行训练,然后可以从其相应的秩值评估新输入图像的各种颜色增强。从我们用于排序的决策树结构与人类在编辑过程中做出的决策之间的相似之处来看,我们假设将完整的增强序列分解为单个步骤可以促进训练。实验表明,该方法与现有的自动色彩增强方法相比效果良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Learning-to-Rank Approach for Image Color Enhancement
We present a machine-learned ranking approach for automatically enhancing the color of a photograph. Unlike previous techniques that train on pairs of images before and after adjustment by a human user, our method takes into account the intermediate steps taken in the enhancement process, which provide detailed information on the person's color preferences. To make use of this data, we formulate the color enhancement task as a learning-to-rank problem in which ordered pairs of images are used for training, and then various color enhancements of a novel input image can be evaluated from their corresponding rank values. From the parallels between the decision tree structures we use for ranking and the decisions made by a human during the editing process, we posit that breaking a full enhancement sequence into individual steps can facilitate training. Our experiments show that this approach compares well to existing methods for automatic color enhancement.
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