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Estimating Depth-Salient Edges and Its Application to Stereoscopic Image Quality Assessment

机译:深度显着边缘的估计及其在立体图像质量评估中的应用

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摘要

The human visual system pays attention to salient regions while perceiving an image. When viewing a stereoscopic 3-D (S3D) image, we hypothesize that while most of the contribution to saliency is provided by the 2-D image, a small but significant contribution is provided by the depth component. Further, we claim that only a subset of image edges contribute to depth perception while viewing an S3D image. In this paper, we propose a systematic approach for depth saliency estimation, called salient edges with respect to depth perception (SED) which localizes the depth-salient edges in an S3D image. We demonstrate the utility of SED in full reference stereoscopic image quality assessment. We consider gradient magnitude and inter-gradient maps for predicting structural similarity. A coarse quality map is estimated first by comparing the 2-D saliency and gradient maps of reference and test stereo pairs. We average this quality map to estimate luminance quality and refine this quality map using SED maps for evaluating depth quality. Finally, we combine this luminance and depth quality to obtain an overall stereo image quality. We perform a comprehensive evaluation of our metric on seven publicly available S3D IQA databases. The proposed metric shows competitive performance on all seven databases with state-of-the-art performance on three of them.
机译:人类的视觉系统在感知图像时会注意显着区域。当查看立体3-D(S3D)图像时,我们假设虽然对显着性的大部分贡献是由2-D图像提供的,但深度分量却提供了一个很小但重要的贡献。此外,我们声称在查看S3D图像时,只有图像边缘的子集有助于深度感知。在本文中,我们提出了一种用于深度显着性估计的系统方法,该方法被称为相对于深度感知(SED)的显着边缘,它可将S3D图像中的深度显着边缘定位在本地。我们演示了SED在完全参考立体图像质量评估中的实用性。我们考虑使用梯度量级和梯度梯度图来预测结构相似性。首先通过比较参考和测试立体对的2D显着性和梯度图来估计粗略的质量图。我们对该质量图进行平均,以估计亮度质量,并使用SED映射图完善该质量图以评估深度质量。最后,我们将亮度和深度质量结合起来以获得整体立体图像质量。我们在七个公开可用的S3D IQA数据库上对指标进行了全面评估。拟议的指标显示了所有七个数据库的竞争性能,其中三个具有最新性能。

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