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Light Field Image Sparse Coding via CNN-Based EPI Super-Resolution

机译:基于CNN的EPI超分辨率的光场图像稀疏编码

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This paper proposes a novel light field (LF) image compression scheme by super resolving the epipolar plane image (EPI) via convolutional neural network (CNN). In the scheme, we first decompose the LF image into sub-aperture images (SAIs), and only one quarter of them are compressed on the encoding side to reduce the bitrate. On the decoding side, we use these selected SAIs to reconstruct the entire LF by taking advantage of the special structure of EPI. The low-resolution EPIs generated from the sparse SAIs are super resolved by using deep residual network and the output high-resolution EPIs are used to rebuild the dense SAIs. Experimental results show the superior performance of our scheme, which achieve 1.46 dB quality improvement and 35.85 percent bit rate reduction on average compared with the typical pseudo-sequence-based coding method.
机译:通过卷积神经网络(CNN)对极平面图像(EPI)进行超分辨,提出了一种新颖的光场(LF)图像压缩方案。在该方案中,我们首先将LF图像分解为子孔径图像(SAI),并且仅将其中的四分之一在编码侧压缩以降低比特率。在解码方面,我们利用这些选定的SAI通过利用EPI的特殊结构来重构整个LF。通过使用深度残差网络对由稀疏SAI生成的低分辨率EPI进行超级解析,并将输出的高分辨率EPI用于重建密集SAI。实验结果表明,与典型的基于伪序列的编码方法相比,我们的方案具有出色的性能,可实现1.46 dB的质量改善和平均35.85%的比特率降低。

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