A Refined Weighted Mode Filtering Approach for Depth Video Enhancement

X. Zuo, Jiangbin Zheng
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引用次数: 2

Abstract

Given a low-quality depth video and its corresponding high-quality color video, we intend to improve depth quality by suppressing both spatial and temporal noise. A refined weighted mode filtering method (WMF) based on a joint histogram is proposed. For WMF, similarity between reference and neighbor pixels plays an important role in counting each bin of the joint histogram. Since calculating similarity using single pixel will be affected by random pixel noise, we utilize patch-based NL-means (Non-Local means) for structure-aware similarity calculation, also, we fuse color and depth similarity adaptively with credibility maps to deal with texture copying problem. For temporally consistent recovery, we introduce inter frame correlation by integrating neighboring frames with optical flow and patch-based similarity measurement. Experimental results show that our proposed method has achieved more complete and clear depth, especially in discontinuous areas. Furthermore, temporally enhancement of depth video addresses flickering problem and gets more stable depth.
一种用于视频深度增强的精细加权模式滤波方法
给定一个低质量深度视频及其相应的高质量彩色视频,我们打算通过抑制空间和时间噪声来提高深度质量。提出了一种基于联合直方图的加权模式滤波方法。对于WMF,参考像素和相邻像素之间的相似性在统计联合直方图的每个bin中起着重要作用。由于使用单个像素计算相似度会受到随机像素噪声的影响,我们利用基于patch的NL-means (Non-Local means)进行结构感知的相似度计算,并将颜色和深度相似度自适应地融合到可信度图中来处理纹理复制问题。为了实现时间一致性恢复,我们利用光流和基于贴片的相似度度量对相邻帧进行积分,引入帧间相关。实验结果表明,该方法可以获得更完整、更清晰的深度,特别是在不连续区域。此外,深度视频的时间增强解决了闪烁问题,获得了更稳定的深度。
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