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A feature analysis approach to estimate 3D Shape from Image Focus

机译:图像焦点估算3D形状的特征分析方法

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This paper introduces a new robust algorithm for Shape From Focus (SFF). Principal Component Analysis (PCA) is applied to transform the data into eigenspace and the first feature is employed to calculate the depth value. Contrary to computing the focus value locally by a focus measure in first step and then, in second step, approximating the depth map, the proposed method finds the location of the best focused value over a sequence of pixels. The proposed method is experimented using synthetic and real image sequences. The evaluation is gauged on the basis of unimodality and monotonicity of the focus curve. Two other global statistical metrics Root Mean Square Error (RMSE) and correlation have also been applied for synthetic image sequence. Experimental results have demonstrated the effectiveness and the robustness of the new method.
机译:本文介绍了一种来自焦点(SFF)的新型鲁棒算法。应用主成分分析(PCA)将数据转换为Eigenspace,并且使用第一特征来计算深度值。与在第一步中的焦点测量中局部计算聚焦值,然后在近似深度图的第二步骤中,所提出的方法在像素序列中找到最佳聚焦值的位置。所提出的方法使用合成和实图像序列进行实验。基于单层曲线的单调和单调性测量评估。还应用了另外两种全局统计指标根均方误差(RMSE)和相关性用于合成图像序列。实验结果表明了新方法的有效性和鲁棒性。

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