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Stereoscopic Image Quality Assessment via Convolutional Neural Networks

机译:立体图像质量评估通过卷积神经网络

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This paper mainly introduces an image quality assessment for stereoscopic images via Convolutional Neural Networks (CNN). Firstly, the left and the right view images of a stereoscopic image need to be fused in the way of Principal Component Analysis (PCA). Secondly, method of Mean Subtraction and Contrast Normalization (MSCN) is applied in the fusion images. Finally, taking non-overlapping small patches of each image as the input, the CNN can train an evaluation model between image features and Different Mean Opinion Scores (DMOS). The model can predict quality scores of image patches and we average the patch scores of each image to get the final predicted quality scores of large images.
机译:本文主要介绍了通过卷积神经网络(CNN)的立体图像的图像质量评估。首先,需要以主成分分析(PCA)的方式融合立体图像的左侧和右视图图像。其次,在融合图像中施加平均减法和对比度标准化(MSCN)的方法。最后,将每个图像的非重叠小斑块作为输入,CNN可以在图像特征和不同平均意见分数(DMOS)之间训练评估模型。该模型可以预测图像补丁的质量评分,我们平均平均每个图像的补丁分数,以获得最终预测的大图像的质量评分。

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