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Color image definition evaluation method based on deep learning method

机译:基于深度学习方法的彩色图像定义评估方法

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In order to evaluate different blurring levels of color image and improve the method of image definition evaluation, this paper proposed a method based on the depth learning framework and BP neural network classification model, and presents a non-reference color image clarity evaluation method. Firstly, using VGG16 net as the feature extractor to extract 4,096 dimensions features of the images, then the extracted features and labeled images are employed in BP neural network to train. And finally achieve the color image definition evaluation. The method in this paper are experimented by using images from the CSIQ database. The images are blurred at different levels. There are 4,000 images after the processing. Dividing the 4,000 images into three categories, each category represents a blur level. 300 out of 400 high-dimensional features are trained in VGG16 net and BP neural network, and the rest of 100 samples are tested. The experimental results show that the method can take full advantage of the learning and characterization capability of deep learning. Referring to the current shortcomings of the major existing image clarity evaluation methods, which manually design and extract features. The method in this paper can extract the images features automatically, and has got excellent image quality classification accuracy for the test data set. The accuracy rate is 96%. Moreover, the predicted quality levels of original color images are similar to the perception of the human visual system.
机译:为了评估不同的模糊水平的彩色图像和改进图像定义评估方法,提出了一种基于深度学习框架和BP神经网络分类模型的方法,并提出了非参考彩色图像清晰度评估方法。首先,使用VGG16网络作为特征提取器来提取图像的4,096个尺寸特征,然后提取的特征和标记的图像在BP神经网络中用于训练。最后实现彩色图像定义评估。本文中的方法是通过使用CSIQ数据库的图像进行实验的。图像在不同的级别模糊。处理后有4,000个图像。将4,000图像分为三类,每个类别代表模糊级别。在VGG16网和BP神经网络中培训了400个高维特征中的300,其余的100个样本进行了测试。实验结果表明,该方法可以充分利用深度学习的学习和表征能力。参考主要现有图像清晰度评估方法的当前缺点,该评估方法手动设计和提取功能。本文中的方法可以自动提取图像功能,并为测试数据集具有出色的图像质量分类精度。精度率为96%。此外,原始彩色图像的预测质量水平类似于人类视觉系统的感知。

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