Xu, K., He, G., Xu, L., Zhang, Z., Yu, W., Wang, S., Zhou, D., & Li, Y. (2024). Beyond Feature Mapping GAP: Integrating Real HDRTV Priors for Superior SDRTV-to-HDRTV Conversion. arXiv preprint arXiv:2411.10775.
This paper addresses the limitations of existing SDRTV-to-HDRTV conversion methods that struggle to handle the diverse styles and limited information present in real-world scenarios. The authors propose a novel method, RealHDRTVNet, to enhance the quality of SDRTV-to-HDRTV conversion by directly embedding HDRTV priors into the transformation process.
The proposed RealHDRTVNet framework operates in three phases. First, an HDRTV-VQGAN model is trained to learn and store real HDRTV priors in a codebook. Second, an SDRTV modulation encoder transforms SDRTV latent features into a space congruent with HDRTV priors. Finally, the RealHDRTVNet utilizes an HDR Color Alignment (HCA) module to match the input with the optimal HDRTV prior from the codebook and an SDR Texture Alignment (STA) module to preserve the texture details of the original SDRTV input.
The authors demonstrate the effectiveness of their method through extensive experiments on synthetic and real-world datasets. RealHDRTVNet outperforms state-of-the-art methods in both objective metrics like PSNR and SSIM, and subjective metrics like LPHPS, FHAD, and NHQE. The results indicate that the proposed method achieves superior visual quality, better perceptual similarity, and higher consistency with real-world HDRTV distribution.
This research presents a novel and effective approach for SDRTV-to-HDRTV conversion by leveraging real HDRTV priors. The integration of these priors significantly improves the accuracy and generalization capabilities of the conversion process, leading to more realistic and visually appealing HDRTV content.
This work significantly contributes to the field of image and video processing by introducing a new paradigm for SDRTV-to-HDRTV conversion. The proposed method and the extended subjective quality evaluation metrics offer valuable tools for researchers and practitioners to develop and evaluate HDRTV content.
While the proposed method demonstrates promising results, future research could explore the application of this approach to other image enhancement tasks beyond SDRTV-to-HDRTV conversion. Additionally, investigating the impact of different HDRTV prior representations and exploring more efficient prior matching techniques could further enhance the performance and efficiency of the proposed method.
다른 언어로
소스 콘텐츠 기반
arxiv.org
더 깊은 질문