3-D shape recovery from image focus using no-reference sharpness metric based on inherent sharpness

Fahad Mahmood, M. Mahmood, J. Iqbal
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引用次数: 1

Abstract

Recovering an accurate depth map from its corresponding 2-D images using shape from focus architecture is a convoluted issue in computer vision and signal processing society. This paper contributes a new robust focus measure for 3-D shape recovery based on discrete wavelet transform and inherent sharpness approach. This novel focus measure technique utilizes no-reference sharpness metric based on inherent sharpness approach. The no-reference sharpness metric estimates a perceptual sharpness score based on the coefficients of discrete wavelet transform. To obtain the data of high frequency elements in an image the perceptual sharpness metric utilizes diagonal coefficients and approximated sub-signal of wavelet decomposition. The efficiency of the proposed scheme is evaluated by comparing it with state of art shape from focus approaches by conducting experiments on real and synthetic image sequences. Two global statistical metrics are utilized for performance evaluation by conducting experiments on real world images and synthetic image sequences. The evaluation is estimated on the basis of monotonicity and unimodality of the focus measure curve. The experimented results are then discussed in various forms to support the proposed scheme.
基于固有锐度的无参考锐度度量从图像焦点中恢复三维形状
在计算机视觉和信号处理领域,利用焦点结构的形状从相应的二维图像中恢复精确的深度图是一个棘手的问题。提出了一种基于离散小波变换和固有锐度方法的三维形状恢复鲁棒焦点度量方法。该方法采用基于固有锐度法的无参考锐度度量。无参考清晰度度量基于离散小波变换系数估计感知清晰度评分。感知锐度度量利用小波分解的对角系数和近似子信号来获取图像中的高频元素数据。通过对真实图像序列和合成图像序列的实验,将该方法与现有的聚焦形状方法进行比较,评价了该方法的有效性。通过对真实世界图像和合成图像序列进行实验,利用两个全局统计指标进行性能评价。根据焦点测量曲线的单调性和单峰性进行评价。然后以各种形式讨论了实验结果,以支持所提出的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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