A major challenge for matching-based depth estimation is to prevent mismatches in occlusion and smooth regions. An effective matching window satisfying three characteristics: texture richness, disparity consistency and anti-occlusion should be able to prevent mismatches to some extent. According to these characteristics, we propose matching entropy in the spatial domain of light field to measure the amount of correct information in a matching window, which provides the criterion for matching window selection. Based on matching entropy regularization, we establish an optimization model for depth estimation with a matching cost fidelity term. To find the optimum, we propose a two-step adaptive matching algorithm. First, the region type is adaptively determined to identify occluding, occluded, smooth and textured regions. Then, the matching entropy criterion is used to adaptively select the size and shape of matching windows, as well as the visible viewpoints. The two-step process can reduce mismatches and redundant calculations by selecting effective matching windows. The experimental results on synthetic and real data show that the proposed method can effectively improve the accuracy of depth estimation in occlusion and smooth regions and has strong robustness for different noise levels. Therefore, high-precision depth estimation from 4D light field data is achieved.
翻译:匹配深度估算的主要挑战是防止封闭和平滑区域的不匹配。有效的匹配窗口满足了三个特征:质谱丰富、差异一致性和反封闭性。一个有效的匹配窗口能够在一定程度上防止不匹配。根据这些特征,我们提议在光线空间域中匹配英特罗比,以测量匹配窗口中正确信息的数量,这为匹配窗口选择匹配提供了标准。根据匹配英特罗普规范化,我们为深度估算建立一个优化模型,以匹配成本对等术语。为了找到最佳,我们建议了两步适应匹配算法。首先,区域类型是适应性地决定了识别渗漏、隐蔽、平滑和纹理区域。然后,匹配英特罗比标准用于适应性地选择匹配窗口的大小和形状以及可见的观点。两步进程可以通过选择有效的匹配窗口来减少不匹配和冗余计算。合成和真实数据的实验结果显示,拟议的方法可以有效地提高深度估算深度的准确性。首先,区域类型是适应性、隐蔽、平滑、平滑、平滑和纹区域。然后,匹配的酶标准用于不同噪音的高度的实地估算。