激光与光电子学进展, 2017, 54 (7): 071101, 网络出版: 2017-07-05   

融合特征点密度与边缘信息的场景深度估计

Fusing Feature Point Density and Edge Information for Scene Depth Estimation
作者单位
1 北京信息科技大学应用数学研究所, 北京 100101
2 北京大学数学科学学院, 北京 100871
摘要
通过分析特征点密度与物点聚焦程度的关系,建立基于特征点密度的聚焦测度。将融合特征点密度与边缘信息建立新的聚焦测度,利用聚焦堆栈数据实现场景深度的估计与全聚焦成像。对于由边缘信息建立的聚焦测度在图像纹理区域存在不准确性,该方法可以有效地弥补这一缺点。将刻画边缘信息的Sum-Modified-Laplacian(SML)方法与特征点密度函数相融合建立新的聚焦测度,用于三维场景重构,实现了场景深度估计和全聚焦成像算法。实验结果表明,新方法有效地剔除了SML在纹理区域估计错误的深度值,保留了SML在边缘区域的优势,得到了高精度的场景深度图及其全聚焦图像。
Abstract
The relationship between the feature point density and the object degree of focus is analyzed, and a focus measure based on the feature point density is proposed. A novel focus measure fusing the feature point density and the edge information is proposed. The focus measure for scene depth estimation and all-in-focus imaging from focus stack is utilized. The proposed method can effectively compensate for the focus measure based on the edge information which is inaccurate in the image texture regions. The focus measure fusing the feature point density function and the sum-modified-Laplacian (SML) is used for the three-dimensional scene reconstruction, and the scene depth estimation and all-in-focus imaging algorithm are achieved. The experimental results show that the proposed method can effectively eliminate the error depth value which the SML estimates in the image texture region, retain the advantages of SML in the edge region and the high precision scene depth maps and all-in-focus images are obtained.

何建梅, 邱钧, 刘畅. 融合特征点密度与边缘信息的场景深度估计[J]. 激光与光电子学进展, 2017, 54(7): 071101. He Jianmei, Qiu Jun, Liu Chang. Fusing Feature Point Density and Edge Information for Scene Depth Estimation[J]. Laser & Optoelectronics Progress, 2017, 54(7): 071101.

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