Information Fusion based Quality Enhancement for 3D Stereo Images Using CNN

Zhi Jin, Naili Luo, Lei Luo, Wenbin Zou, Xia Li, E. Steinbach
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引用次数: 1

Abstract

Stereo images provide users with a vivid 3D watching experience. Supported by per-view depth maps, 3D stereo images can be used to generate any required intermediate view between the given left and right stereo views. However, 3D stereo images lead to higher transmission and storage cost compared to single view images. Based on the binocular suppression theory, mixed-quality stereo images can alleviate this problem by employing different compression ratios on the two views. This causes noticeable visual artifacts when a high compression ratio is adopted and limits free-viewpoint applications. Hence, the low quality image at the receiver side needs to be enhanced to match the high quality one. To address this problem, in this paper we propose an end-to-end fully Convolutional Neural Network (CNN) for enhancing the low quality images in quality asymmetric stereo images by exploiting inter-view correlation. The proposed network achieves an image quality boost of up to 4.6dB and 3.88dB PSNR gain over ordinary JPEG for QF10 and 20, respectively, and an improvement of up to 2.37dB and 2.05dB over the state-of-the-art CNN-based results for QF10 and 20, respectively.
基于信息融合的CNN三维立体图像质量增强
立体图像为用户提供了生动的3D观看体验。在每视图深度图的支持下,3D立体图像可以用来在给定的左右立体视图之间生成任何所需的中间视图。然而,与单视图图像相比,3D立体图像的传输和存储成本更高。基于双目抑制理论,混合质量立体图像可以通过对两个视图采用不同的压缩比来缓解这一问题。当采用高压缩比时,这会导致明显的视觉伪影,并限制自由视点应用。因此,需要对接收端的低质量图像进行增强以匹配高质量图像。为了解决这一问题,本文提出了一种端到端的全卷积神经网络(CNN),通过利用视点间相关性来增强高质量非对称立体图像中的低质量图像。在QF10和qf20中,与普通JPEG相比,该网络的图像质量分别提高了4.6dB和3.88dB的PSNR增益,在QF10和qf20中,与最先进的基于cnn的结果相比,该网络的图像质量分别提高了2.37dB和2.05dB。
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