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Blind Quality Assessment of Tone-Mapped Images with Multi-scale Visual Feature Extraction Neural Network

机译:具有多尺度视觉特征提取神经网络的色调映射图像的盲质量评估

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To guarantee the quality of high dynamic range image (HDRI), various tone-mapped operators (TMOs) have been designed to display HDRI on traditional displays recently. Naturally, the image perceptual quality deteriorates seriously due to the inevitable distortions under different TMOs. In this paper, we propose a multi-scale visual feature extraction neural network for blind image quality assessment (BIQA) of TMIs. Specifically, hierarchical image decomposition is elaborately considered to mimic the hierarchical perception mechanism in the human visual system, expecting to better extract and fuse the multi scale features for quality prediction. Besides, under the proposed learning framework, the procedure of feature extraction, multi-scale feature fusion and quality prediction can be jointly optimized in an end-to-end manner. The experiments verify the stable performance of the proposed method on two public TMIs datasets.
机译:为了保证高动态范围图像(HDRI)的质量,设计了各种音调的操作员(TMOS)最近旨在在传统显示器上显示HDRI。 当然,由于不同TMOS下的不可避免的扭曲,图像感知质量严重恶化。 在本文中,我们提出了一种用于TMI的盲图像质量评估(BIQA)的多尺度视觉特征提取神经网络。 具体地,精确地认为分层图像分解以模拟人类视觉系统中的分层感知机制,期望更好地提取和融合多尺度特征以进行质量预测。 此外,在所提出的学习框架下,特征提取程序,多尺度特征融合和质量预测可以以端到端的方式共同优化。 实验验证了在两个公共TMIS数据集中核实所提出的方法的稳定性能。

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