多视点视频压缩的隐式显式集成表示

Chen Zhu;Guo Lu;Bing He;Rong Xie;Li Song
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摘要

随着3D显示和虚拟现实技术的日益普及,多视点视频已经成为一种很有前途的视频格式。然而,它的高分辨率和多摄像头拍摄导致数据量大幅增加,使存储和传输成为一项具有挑战性的任务。为了解决这些困难,我们提出了一种隐式显式的多视点视频压缩集成表示。具体来说,我们首先使用基于显式表示的2D视频编解码器对其中一个源视图进行编码。随后,我们提出采用基于隐式神经表示(INR)的编解码器对剩余的视图进行编码。隐式编解码器以多视点视频的时间和视点索引作为坐标输入,生成相应的隐式重构帧。为了提高可压缩性,我们在隐式编解码器中引入了多级特征网格嵌入和全卷积结构。这些组件分别促进坐标-特征和特征- rgb映射。为了进一步提高INR编解码器的重构质量,我们利用显式编解码器的高质量重构帧来实现视域间补偿。最后,将补偿结果与INR的隐式重构融合,得到最终重构帧。我们提出的框架结合了隐式神经表示和显式二维编解码器的优势。在公共数据集上进行的大量实验表明,所提出的框架在视图压缩和场景建模方面可以达到与最新的多视图视频压缩标准MIV和其他基于inr的方案相当甚至更好的性能。源代码可以在https://github.com/zc-lynen/MV-IERV上找到。
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Implicit-Explicit Integrated Representations for Multi-View Video Compression
With the increasing consumption of 3D displays and virtual reality, multi-view video has become a promising format. However, its high resolution and multi-camera shooting result in a substantial increase in data volume, making storage and transmission a challenging task. To tackle these difficulties, we propose an implicit-explicit integrated representation for multi-view video compression. Specifically, we first use the explicit representation-based 2D video codec to encode one of the source views. Subsequently, we propose employing the implicit neural representation (INR)-based codec to encode the remaining views. The implicit codec takes the time and view index of multi-view video as coordinate input and generates the corresponding implicit reconstruction frames. To enhance the compressibility, we introduce a multi-level feature grid embedding and a fully convolutional architecture into the implicit codec. These components facilitate coordinate-feature and feature-RGB mapping, respectively. To further enhance the reconstruction quality from the INR codec, we leverage the high-quality reconstructed frames from the explicit codec to achieve inter-view compensation. Finally, the compensated results are fused with the implicit reconstructions from the INR to obtain the final reconstructed frames. Our proposed framework combines the strengths of both implicit neural representation and explicit 2D codec. Extensive experiments conducted on public datasets demonstrate that the proposed framework can achieve comparable or even superior performance to the latest multi-view video compression standard MIV and other INR-based schemes in terms of view compression and scene modeling. The source code can be found at https://github.com/zc-lynen/MV-IERV.
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