8 results on '"Luo, ZiYuan"'
Search Results
2. CopyRNeRF: Protecting the CopyRight of Neural Radiance Fields
- Author
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Luo, Ziyuan, Guo, Qing, Cheung, Ka Chun, See, Simon, Wan, Renjie, Luo, Ziyuan, Guo, Qing, Cheung, Ka Chun, See, Simon, and Wan, Renjie
- Abstract
Neural Radiance Fields (NeRF) have the potential to be a major representation of media. Since training a NeRF has never been an easy task, the protection of its model copyright should be a priority. In this paper, by analyzing the pros and cons of possible copyright protection solutions, we propose to protect the copyright of NeRF models by replacing the original color representation in NeRF with a watermarked color representation. Then, a distortion-resistant rendering scheme is designed to guarantee robust message extraction in 2D renderings of NeRF. Our proposed method can directly protect the copyright of NeRF models while maintaining high rendering quality and bit accuracy when compared among optional solutions., Comment: 11 pages, 6 figures, accepted by ICCV 2023 non-camera-ready version
- Published
- 2023
3. Quality Assessment of Stereoscopic 360-degree Images from Multi-viewports
- Author
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Xu, Jiahua, Luo, Ziyuan, Zhou, Wei, Zhang, Wenyuan, Chen, Zhibo, Xu, Jiahua, Luo, Ziyuan, Zhou, Wei, Zhang, Wenyuan, and Chen, Zhibo
- Abstract
Objective quality assessment of stereoscopic panoramic images becomes a challenging problem owing to the rapid growth of 360-degree contents. Different from traditional 2D image quality assessment (IQA), more complex aspects are involved in 3D omnidirectional IQA, especially unlimited field of view (FoV) and extra depth perception, which brings difficulty to evaluate the quality of experience (QoE) of 3D omnidirectional images. In this paper, we propose a multi-viewport based fullreference stereo 360 IQA model. Due to the freely changeable viewports when browsing in the head-mounted display (HMD), our proposed approach processes the image inside FoV rather than the projected one such as equirectangular projection (ERP). In addition, since overall QoE depends on both image quality and depth perception, we utilize the features estimated by the difference map between left and right views which can reflect disparity. The depth perception features along with binocular image qualities are employed to further predict the overall QoE of 3D 360 images. The experimental results on our public Stereoscopic OmnidirectionaL Image quality assessment Database (SOLID) show that the proposed method achieves a significant improvement over some well-known IQA metrics and can accurately reflect the overall QoE of perceived images.
- Published
- 2019
4. No-Reference Light Field Image Quality Assessment Based on Micro-Lens Image
- Author
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Luo, Ziyuan, Zhou, Wei, Shi, Likun, Chen, Zhibo, Luo, Ziyuan, Zhou, Wei, Shi, Likun, and Chen, Zhibo
- Abstract
Light field image quality assessment (LF-IQA) plays a significant role due to its guidance to Light Field (LF) contents acquisition, processing and application. The LF can be represented as 4-D signal, and its quality depends on both angular consistency and spatial quality. However, few existing LF-IQA methods concentrate on effects caused by angular inconsistency. Especially, no-reference methods lack effective utilization of 2-D angular information. In this paper, we focus on measuring the 2-D angular consistency for LF-IQA. The Micro-Lens Image (MLI) refers to the angular domain of the LF image, which can simultaneously record the angular information in both horizontal and vertical directions. Since the MLI contains 2-D angular information, we propose a No-Reference Light Field image Quality assessment model based on MLI (LF-QMLI). Specifically, we first utilize Global Entropy Distribution (GED) and Uniform Local Binary Pattern descriptor (ULBP) to extract features from the MLI, and then pool them together to measure angular consistency. In addition, the information entropy of Sub-Aperture Image (SAI) is adopted to measure spatial quality. Extensive experimental results show that LF-QMLI achieves the state-of-the-art performance.
- Published
- 2019
5. Perceptual evaluation of pre-processing for video transcoding
- Author
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Huang, Shiyu, Luo, Ziyuan, Xu, Jiahua, Zhou, Wei, Chen, Zhibo, Huang, Shiyu, Luo, Ziyuan, Xu, Jiahua, Zhou, Wei, and Chen, Zhibo
- Abstract
Recently, the pre-processed video transcoding has attracted wide attention and has been increasingly used in practical applications for improving the perceptual experience and saving transmission resources. However, very few works have been conducted to evaluate the performance of pre-processing methods. In this paper, we select the source (SRC) videos and various pre-processing approaches to construct the first Pre-processed and Transcoded Video Database (PTVD). Then, we conduct the subjective experiment, showing that compared with the video sent to the codec directly at the same bitrate, the appropriate pre-processing methods indeed improve the perceptual quality. Finally, existing image/video quality metrics are evaluated on our database. The results indicate that the performance of the existing image/video quality assessment (IQA/VQA) approaches remain to be improved. We will make our database publicly available soon.
6. Quality assessment of stereoscopic 360-degree images from multi-viewports
- Author
-
Xu, Jiahua, Luo, Ziyuan, Zhou, Wei, Zhang, Wenyuan, Chen, Zhibo, Xu, Jiahua, Luo, Ziyuan, Zhou, Wei, Zhang, Wenyuan, and Chen, Zhibo
- Abstract
Objective quality assessment of stereoscopic panoramic images becomes a challenging problem owing to the rapid growth of 360-degree contents. Different from traditional 2D image quality assessment (IQA), more complex aspects are involved in 3D omnidirectional IQA, especially unlimited field of view (FoV) and extra depth perception, which brings difficulty to evaluate the quality of experience (QoE) of 3D omnidirectional images. In this paper, we propose a multi-viewport based full-reference stereo 360 IQA model. Due to the freely changeable viewports when browsing in the head-mounted display, our proposed approach processes the image inside FoV rather than the projected one such as equirectangular projection (ERP). In addition, since overall QoE depends on both image quality and depth perception, we utilize the features estimated by the difference map between left and right views which can reflect disparity. The depth perception features along with binocular image qualities are employed to further predict the overall QoE of 3D 360 images. The experimental results on our public Stereoscopic OmnidirectionaL Image quality assessment Database (SOLID) show that the proposed method achieves a significant improvement over some well-known IQA metrics and can accurately reflect the overall QoE of perceived images.
7. Multi-metric fusion network for image quality assessment
- Author
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Peng, Yanding, Xu, Jiahua, Luo, Ziyuan, Zhou, Wei, Chen, Zhibo, Peng, Yanding, Xu, Jiahua, Luo, Ziyuan, Zhou, Wei, and Chen, Zhibo
- Abstract
With the fast proliferation of multimedia applications, the reliable prediction of image/video quality is urgently needed. Many quality assessment metrics have been proposed in the past decades with various complexity and consistency with human ratings. The metrics are designed from different aspects, e.g., pixel level fidelity, structural similarity, information theory and data-driven. In this paper, we design a Multi-Metric Fusion Network (MMFN) for aggregating the quality scores predicted by diverse metrics to generate more accurate results. To be specific, we utilize the image features extracted from the pretrained network to adaptively rescale the predicted quality from different metrics, and leverage the fully-connected layers to regress a single scalar as the final score. Pairwise images can be further integrated into the training procedure by adding a Score2Prob layer. Experimental results on the validation and test sets demonstrate that our proposed MMFN achieves better prediction accuracy compared with other metrics.
8. No-reference light field image quality assessment based on micro-lens image
- Author
-
Luo, Ziyuan, Zhou, Wei, Shi, Likun, Chen, Zhibo, Luo, Ziyuan, Zhou, Wei, Shi, Likun, and Chen, Zhibo
- Abstract
Light field image quality assessment (LF-IQA) plays a significant role due to its guidance to Light Field (LF) contents acquisition, processing and application. The LF can be represented as 4-D signal, and its quality depends on both angular consistency and spatial quality. However, few existing LF-IQA methods concentrate on effects caused by angular inconsistency. Especially, no-reference methods lack effective utilization of 2D angular information. In this paper, we focus on measuring the 2-D angular consistency for LF-IQA. The Micro-Lens Image (MLI) refers to the angular domain of the LF image, which can simultaneously record the angular information in both horizontal and vertical directions. Since the MLI contains 2D angular information, we propose a No-Reference Light Field image Quality assessment model based on MLI (LF-QMLI). Specifically, we first utilize Global Entropy Distribution (GED) and Uniform Local Binary Pattern descriptor (ULBP) to extract features from the MLI, and then pool them together to measure angular consistency. In addition, the information entropy of SubAperture Image (SAI) is adopted to measure spatial quality. Extensive experimental results show that LF-QMLI achieves the state-of-the-art performance.
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