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Deep Objective Image Quality Assessment

机译:深度物镜图像质量评估

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摘要

We present a generic blind image quality assessment method that is able to detect common operations that affect image quality as well as estimate parameters of these operations (e.g. JPEG compression quality). For this purpose, we propose a CNN architecture for multi-label classification and integrate patch predictions to obtain continuous parameter estimates. We train this architecture using softmax layers that support multi-label classification and simultaneous training on multiple datasets with heterogeneous labels. Experimental results show that the resulting multi-label CNNs perform similarly to multiple individually trained CNNs while being several times more efficient, and that common image operations and their parameters can be estimated with high accuracy. Furthermore, we demonstrate that the learned features are discriminative for subjective image quality assessment, achieving state-of-the-art results on the LIVE2 dataset via transfer learning. The proposed CNN architecture supports any multi-label classification problem.
机译:我们提出了一种通用的盲图图像质量评估方法,该方法能够检测到影响图像质量的常见操作,并估算这些操作的参数(例如JPEG压缩质量)。为此,我们提出了一种用于多标签分类的CNN架构,并集成了补丁预测以获取连续的参数估计值。我们使用softmax层来训练此体系结构,该层支持多标签分类并在具有异构标签的多个数据集上同时进行训练。实验结果表明,所得的多标签CNN的性能与多个单独训练的CNN相似,但效率要高出好几倍,并且可以以较高的精度估算常见的图像操作及其参数。此外,我们证明所学习的功能对于主观图像质量评估具有歧视性,通过转移学习在LIVE2数据集上获得了最新的结果。提出的CNN体​​系结构支持任何多标签分类问题。

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