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Autores principales: Diao, Shanding, Zhao, Yang, Chen, Yuan, Zhang, Zhao, Jia, Wei, Wang, Ronggang
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2412.03102
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author Diao, Shanding
Zhao, Yang
Chen, Yuan
Zhang, Zhao
Jia, Wei
Wang, Ronggang
author_facet Diao, Shanding
Zhao, Yang
Chen, Yuan
Zhang, Zhao
Jia, Wei
Wang, Ronggang
contents With the rapid development of stereoscopic display technologies, especially glasses-free 3D screens, and virtual reality devices, stereoscopic conversion has become an important task to address the lack of high-quality stereoscopic image and video resources. Current stereoscopic conversion algorithms typically struggle to balance reconstruction performance and inference efficiency. This paper proposes a planar video real-time stereoscopic conversion network based on multi-plane images (MPI), which consists of a detail branch for generating MPI and a depth-semantic branch for perceiving depth information. Unlike models that depend on explicit depth map inputs, the proposed method employs a lightweight depth-semantic branch to extract depth-aware features implicitly. To optimize the lightweight branch, a heavy training but light inference strategy is adopted, which involves designing a coarse-to-fine auxiliary branch that is only used during the training stage. In addition, the proposed method simplifies the MPI rendering process for stereoscopic conversion scenarios to further accelerate the inference. Experimental results demonstrate that the proposed method can achieve comparable performance to some state-of-the-art (SOTA) models and support real-time inference at 2K resolution. Compared to the SOTA TMPI algorithm, the proposed method obtains similar subjective quality while achieving over $40\times$ inference acceleration.
format Preprint
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publishDate 2024
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spellingShingle Lightweight Multiplane Images Network for Real-Time Stereoscopic Conversion from Planar Video
Diao, Shanding
Zhao, Yang
Chen, Yuan
Zhang, Zhao
Jia, Wei
Wang, Ronggang
Computer Vision and Pattern Recognition
With the rapid development of stereoscopic display technologies, especially glasses-free 3D screens, and virtual reality devices, stereoscopic conversion has become an important task to address the lack of high-quality stereoscopic image and video resources. Current stereoscopic conversion algorithms typically struggle to balance reconstruction performance and inference efficiency. This paper proposes a planar video real-time stereoscopic conversion network based on multi-plane images (MPI), which consists of a detail branch for generating MPI and a depth-semantic branch for perceiving depth information. Unlike models that depend on explicit depth map inputs, the proposed method employs a lightweight depth-semantic branch to extract depth-aware features implicitly. To optimize the lightweight branch, a heavy training but light inference strategy is adopted, which involves designing a coarse-to-fine auxiliary branch that is only used during the training stage. In addition, the proposed method simplifies the MPI rendering process for stereoscopic conversion scenarios to further accelerate the inference. Experimental results demonstrate that the proposed method can achieve comparable performance to some state-of-the-art (SOTA) models and support real-time inference at 2K resolution. Compared to the SOTA TMPI algorithm, the proposed method obtains similar subjective quality while achieving over $40\times$ inference acceleration.
title Lightweight Multiplane Images Network for Real-Time Stereoscopic Conversion from Planar Video
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.03102