背光损坏照片校正过程的回归模型

A. V. Goncharova, I. Safonov, I. Romanov
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引用次数: 0

摘要

本文提出了一种选择逆光损伤图像校正参数的方法。我们认为照片中含有由于背光条件导致的曝光不足的区域。这些区域很暗,细节难以辨认。校正参数控制阴影色调中局部对比度的放大程度。此外,校正参数可以作为这类照片的质量估计因子。为了自动选择校正参数,我们通过监督机器学习应用回归。我们提出了从共现矩阵计算的新特征用于回归模型的训练。我们比较了以下技术的性能:最小二乘法、支持向量机、随机森林、CART、随机森林、两种浅神经网络以及几种模型的混合和赌注。我们采用两阶段方法对大数据集的收集进行训练:初始模型在包含约200张照片的手动标记数据集上进行训练,之后我们使用初始模型在具有公共API的社交网络中搜索被背光损坏的照片。这种方法可以收集大约1000张照片,并结合他们的初步质量评估,如果有必要,由专家进行纠正。此外,我们研究了几个著名的盲质量指标在估计受背光影响的照片中的应用。
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The regression model for the procedure of correction of photos damaged by backlighting
In the paper, we propose an approach for selection a correction parameter for images damaged by backlighting. We consider the photos containing underexposed areas due to backlit conditions. Such areas are dark and have poorly discernible details. The correction parameter controls the level of amplification of local contrast in shadow tones. Besides, the correction parameter can be considered as a quality estimation factor for such photos. For an automatic selection of the correction parameter, we apply regression by supervised machine learning. We propose new features calculated from the co-occurrence matrix for the training of the regression model. We compare the performance of the following techniques: the least square method, support vector machine, random forest, CART, random forest, two shallow neural networks as well as blending and staking of several models. We apply two-stage approach for the collection of a big dataset for training: initial model is trained on a manually labeled dataset containing about two hundred of photos, after that we use the initial model for searching for photos damaged by backlit in social networks having public API. Such approach allowed to collect about 1000 photos in conjunction with their preliminary quality assessments that were corrected by experts if it was necessary. In addition, we investigate an application of several well-known blind quality metrics for the estimation of photos affected by backlit.
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