Existing shape from focus (SFF) techniques cannot preserve depth edges and fine structural details from a sequence of multi-focus images. Moreover, noise in the sequence of multi-focus images affects the accuracy of the depth map. In this paper, a novel depth enhancement algorithm for the SFF based on an adaptive weighted guided image filtering (AWGIF) is proposed to address the above issues. The AWGIF is applied to decompose an initial depth map which is estimated by the traditional SFF into a base layer and a detail layer. In order to preserve the edges accurately in the refined depth map, the guidance image is constructed from the multi-focus image sequence, and the coefficient of the AWGIF is utilized to suppress the noise while enhancing the fine depth details. Experiments on real and synthetic objects demonstrate the superiority of the proposed algorithm in terms of anti-noise, and the ability to preserve depth edges and fine structural details compared to existing methods.
翻译:从焦点(SFF)中得出的现有形状技术无法保存深度边缘和从多重点图像序列中获得的精细结构细节。此外,多重点图像序列中的噪音影响到深度图的准确性。本文建议基于适应性加权制导图像过滤法(AWGIF)为SFF提出一个新的深度增强算法,以解决上述问题。特设工作组用于将传统的SFF估计的初始深度图分解成一个基层和一个详细层。为了准确保存精细深度图中的边缘,指导图像是根据多重点图像序列构建的,并且使用AWGIF的系数抑制噪音,同时增加精细的深度细节。关于真实和合成物体的实验显示了拟议的算法在反噪音方面的优越性,以及保持深度边缘和与现有方法相比结构细节的能力。