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首页> 外文期刊>EURASIP journal on advances in signal processing >Subgraphs Matching-Based Side Information Generation for Distributed Multiview Video Coding
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Subgraphs Matching-Based Side Information Generation for Distributed Multiview Video Coding

机译:基于子图匹配的辅助信息生成分布式多视图视频编码

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We adopt constrained relaxation for distributed multiview video coding (DMVC). The novel framework integrates the graph-based segmentation and matching to generate interview correlated side information without knowing the camera parameters, inspired by subgraph semantics and sparse decomposition of high-dimensional scale invariant feature data. The sparse data as a good hypothesis space aim for a best matching optimization of interview side information with compact syndromes, from inferred relaxed coset. The plausible filling-in from a priori feature constraints between neighboring views could reinforce a promising compensation to interview side-information generation for joint multiview decoding. The graph-based representations of multiview images are adopted as constrained relaxation, which assists the interview correlation matching for subgraph semantics of the original Wyner-Ziv image by the graph-based image segmentation and the associated scale invariant feature detector MSER (maximally stable extremal regions) and descriptor SIFT (scale-invariant feature transform). In order to find a distinctive feature matching with a more stable approximation, linear (PCA-SIFT) and nonlinear projections (Locally linear embedding) are adopted to reduce the dimension SIFT descriptors, and TPS (thin plate spline) warping model is to catch a more accurate interview motion model. The experimental results validate the high-estimation precision and the rate-distortion improvements.
机译:对于分布式多视图视频编码(DMVC),我们采用约束松弛。这种新颖的框架集成了基于图的分割和匹配,可在不了解相机参数的情况下生成与采访相关的辅助信息,这受子图语义和高维尺度不变特征数据稀疏分解的启发。稀疏数据是一个很好的假设空间,旨在通过推断的宽松陪伴,以紧凑的综合症对面试附带信息进行最佳匹配优化。来自相邻视图之间的先验特征约束的合理填充可以加强对联合多视图解码的采访边信息生成的有前途的补偿。采用基于图的多视图图像表示作为约束松弛,它通过基于图的图像分割和相关的尺度不变特征检测器MSER(最大稳定的极值区域),帮助对原始Wyner-Ziv图像的子图语义进行采访相关匹配。 )和描述符SIFT(尺度不变特征变换)。为了找到具有更稳定近似值的独特特征匹配,采用线性(PCA-SIFT)和非线性投影(局部线性嵌入)来减小尺寸SIFT描述子,而TPS(薄板样条线)翘曲模型是为了捕捉更准确的面试动作模型。实验结果验证了高估计精度和速率失真的改善。

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