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Deep Learning-Based Perceptual Video Quality Enhancement for 3D Synthesized View

Huan Zhang, Yun Zhang, Linwei Zhu, Weisi Lin

2022IEEE Transactions on Circuits and Systems for Video Technology21 citationsDOI

Abstract

Due to occlusion among views and temporal inconsistency in depth video, spatio-temporal distortion occurs in 3D synthesized video with depth image-based rendering. In this paper, we propose a deep Convolutional Neural Network (CNN)-based synthesized video denoising algorithm to reduce temporal flicker distortion and improve perceptual quality of 3D synthesized video. First, we analyze the spatio-temporal distortion, and model eliminating spatio-temporal distortion as a perceptual video denoising problem. Then, a deep learning-based synthesized video denoising network is proposed, in which a CNN-friendly spatio-temporal loss function is derived from a synthesized video quality metric and integrated with a single image denoising network architecture. Finally, specific schemes, i.e., specific Synthesized Video Denoising Networks (SynVD-Nets), and a general scheme, i.e., General SynVD-Net (GSynVD-Net), based on existing CNN-based denoising models, are developed to handle synthesized video with different distortion levels more effectively. Experimental results show that the proposed SynVD-Net and GSynVD-Net can outperform deep learning-based counterparts and conventional denoising methods, and significantly enhance perceptual quality of 3D synthesized video.

Topics & Concepts

Computer scienceArtificial intelligenceVideo denoisingNoise reductionRendering (computer graphics)Convolutional neural networkDistortion (music)Computer visionDeep learningVideo qualityPattern recognition (psychology)Video processingMetric (unit)Video trackingMultiview Video CodingBandwidth (computing)AmplifierComputer networkOperations managementEconomicsImage and Video Quality AssessmentAdvanced Image Processing TechniquesImage and Signal Denoising Methods
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