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Learning Local Quality-Aware Structures of Salient Regions for Stereoscopic Images via Deep Neural Networks

机译:通过深神经网络学习局部质量意识的立体图像突出区域结构

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摘要

The perceptual quality of stereoscopic images plays an essential role in the human perception of visual information. However, most available stereoscopic image quality assessment (SIQA) methods evaluate 3D visual experience using hand-crafted features or shallow architectures, which cannot model the visual properties of stereo images well. In this paper, we use convolutional neural networks (CNNs) to learn deeper local quality-aware structures for stereo images. With different inputs, two CNN models are designed for no-reference SIQA tasks. The one-column CNN model directly accepts a cyclopean view as the input, and the three-column CNN model jointly considers the cyclopean, left and right views as CNN inputs. The two SIQA frameworks share the same implementation approach: First, to overcome the obstacle of limited SIQA datasets, we accept image patches that have been cropped from corresponding stereopairs as inputs for local quality-sensitive feature extraction. Next, a local feature selection algorithm is used to remove related features on non-salient patches, which could cause large prediction errors. Finally, the reserved local visual structures of salient regions are aggregated into a final quality score in an end-to-end manner. Experimental results on three public SIQA databases demonstrate that our method outperforms most state-of-the-art no-reference (NR) SIQA methods. The results of a cross-database experiment also show the robustness and generality of the proposed method.
机译:立体图像的感知质量在人类对视觉信息的感知中起重要作用。然而,最可用的立体图像质量评估(SIQA)方法使用手工制作的功能或浅架构评估3D视觉体验,这不能良好地模拟立体图像的视觉属性。在本文中,我们使用卷积神经网络(CNNS)来学习更深入的本地质量感知结构为立体图像。采用不同的输入,设计了两个CNN型号用于无参考SIQA任务。一列CNN模型直接接受Cyperopean视图作为输入,三列CNN模型将周期性,左和右视图共同认为是CNN输入。两个SIQA框架共享相同的实现方法:首先,要克服有限的SIQA数据集的障碍,我们接受从相应的立体图像裁剪的图像修补程序作为本地质量敏感特征提取的输入。接下来,使用本地特征选择算法用于去除在非突出斑块上的相关功能,这可能导致大预测误差。最后,突出区域的保留局部视觉结构以端到端的方式聚集成最终质量得分。三个公共SIQA数据库的实验结果表明,我们的方法优于最先进的无参考(NR)SIQA方法。跨数据库实验的结果也显示了该方法的鲁棒性和一般性。

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