基于深度度量学习的端到端光源估计

Bolei Xu, Jingxin Liu, Xianxu Hou, Bozhi Liu, G. Qiu
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引用次数: 19

摘要

以往的深度学习方法通常是直接从输入图像中估计光源值。这种方法可能会因为对图像内容的变化敏感而受到严重影响。为了克服这个问题,我们引入了一种深度度量学习方法,称为光源引导三重网络(IGTN)。IGTN产生一个光源一致和判别特征(ICDF),以实现鲁棒和准确的光源颜色估计。ICDF基于可学习的颜色直方图方案,由语义特征和颜色特征组成。在ICDF空间中,无论其内容是否相似,在相同或相似光源下拍摄的图像都被放置得很近,而在不同光源下拍摄的图像则被放置得很远。我们还采用了端到端的训练策略,可以同时对图像特征进行分组和估计光源值,因此我们的方法不必在单独的模块中对光源进行分类。我们在两个公共数据集上评估我们的方法,并证明我们的方法优于最先进的方法。此外,我们证明了我们的方法对图像外观的敏感性较低,并且可以在高动态范围数据集上获得比其他方法更鲁棒和一致的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
End-to-End Illuminant Estimation Based on Deep Metric Learning
Previous deep learning approaches to color constancy usually directly estimate illuminant value from input image. Such approaches might suffer heavily from being sensitive to the variation of image content. To overcome this problem, we introduce a deep metric learning approach named Illuminant-Guided Triplet Network (IGTN) to color constancy. IGTN generates an Illuminant Consistent and Discriminative Feature (ICDF) for achieving robust and accurate illuminant color estimation. ICDF is composed of semantic and color features based on a learnable color histogram scheme. In the ICDF space, regardless of the similarities of their contents, images taken under the same or similar illuminants are placed close to each other and at the same time images taken under different illuminants are placed far apart. We also adopt an end-to-end training strategy to simultaneously group image features and estimate illuminant value, and thus our approach does not have to classify illuminant in a separate module. We evaluate our method on two public datasets and demonstrate our method outperforms state-of-the-art approaches. Furthermore, we demonstrate that our method is less sensitive to image appearances, and can achieve more robust and consistent results than other methods on a High Dynamic Range dataset.
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