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SUR-Net: Predicting the Satisfied User Ratio Curve for Image Compression with Deep Learning

机译:SUR-Net:使用深度学习预测图像压缩的满意用户比率曲线

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The Satisfied User Ratio (SUR) curve for a lossy image compression scheme, e.g., JPEG, characterizes the probability distribution of the Just Noticeable Difference (JND) level, the smallest distortion level that can be perceived by a subject. We propose the first deep learning approach to predict such SUR curves. Instead of the direct approach of regressing the SUR curve itself for a given reference image, our model is trained on pairs of images, original and compressed. Relying on a Siamese Convolutional Neural Network (CNN), feature pooling, a fully connected regression-head, and transfer learning, we achieved a good prediction performance. Experiments on the MCL-JCI dataset showed a mean Bhattacharyya distance between the predicted and the original JND distributions of only 0.072.
机译:用于有损图像压缩方案(例如JPEG)的“满意用户比率”(SUR)曲线表征了“可注意到的差异”(JND)级别的概率分布,“ JND”级别是对象可以感知的最小失真级别。我们提出了第一种深度学习方法来预测此类SUR曲线。替代直接针对给定参考图像回归SUR曲线本身的方法,我们的模型是在原始和压缩图像对上训练的。依靠暹罗卷积神经网络(CNN),特征池,完全连接的回归头和转移学习,我们获得了良好的预测性能。在MCL-JCI数据集上进行的实验表明,预测JND分布与原始JND分布之间的平均Bhattacharyya距离仅为0.072。

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