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Image Fog Density Recognition Method Based on Multi-Feature Model and S-DAGSVM

机译:基于多特征模型和S-DAGSVM的图像雾密度识别方法

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Aiming at the demand of intelligent image defogging systems for automatic recognition of fog density, this paper proposes an image fog density recognition method based on multi-feature model and S-DAGSVM. By analyzing the image characteristics of different fog densities, a multi-feature model based on the combination of four features of color, dark channel, information and contrast is constructed to characterize the image fog density, and the features are represented in the form of a histogram. Then, the S-DAGSVM algorithm is proposed to performs supervised learning on the combined feature vectors to realize automatic classification of the image fog density. The experimental results show that the proposed multi-feature model can characterize the fog density more efficiently. Compared with existing multi-class SVM algorithms, the S-DAGSVM algorithm has a higher classification accuracy of up to 96.19%, which has a good reference value for the realization of intelligent image defogging systems.
机译:针对智能除雾系统对雾密度自动识别的需求,提出了一种基于多特征模型和S-DAGSVM的图像雾密度识别方法。通过分析不同雾浓度的图像特征,构造了一种基于颜色,暗通道,信息和对比度四个特征的组合的多特征模型,以表征图像雾浓度,并以阴影的形式表示这些特征。直方图。然后,提出了S-DAGSVM算法对组合特征向量进行监督学习,以实现图像雾密度的自动分类。实验结果表明,所提出的多特征模型可以更有效地表征雾的密度。与现有的多类SVM算法相比,S-DAGSVM算法具有更高的分类精度,可达96.19%,对于智能图像除雾系统的实现具有很好的参考价值。

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