Foreground Extraction from Low Depth-of-field Images Based on Colour-texture and HOS Features
-
摘要: 针对低景深(Low depth-of-field, DOF)图像, 提出了一种融合纹理、颜色和高阶统计量(Higher-order statistics, HOS) 特征的聚焦前景提取方法. 首先, 根据相似性最大化原则, 通过迭代获得纹理和颜色特征的优化权重, 实现低景深图像的区域分割. 然后,根据优化权重值计算颜色空间上的加权HOS 值, 并结合区域归属前景的划分策略, 实现低景深图像的前景提取. 实验结果表明, 该算法可以同时取得较高的主观和客观评价效果.Abstract: This paper presents a new algorithm for extracting foreground objects from low depth-of-field (DOF) images using texture, color and high-order statistics (HOS) features. Firstly, an algorithm with automatic weight optimization is designed to segment DOF images according to the principle of maximum similarity. The foreground of DOF images is then extracted based on the weighted HOS and a strategy for foreground region classification. Simulation results demonstrate that the proposed algorithm achieves satisfactory result both subjectively and objectively.
-
[1] Kim C. Segmenting a low-depth-of-field image using morphological filters and region merging. IEEE Transactions on Image Processing, 2005, 14(10): 1503-1511 [2] Ko J, Kim M, Kim C. 2D-to-3D stereoscopic conversion: depth-map estimation in a 2D single-view image. In: Proceedings of SPIE. 2007, 6696: 66962A [3] Mu Ya-Dong, Zhou Bing-Feng. A fast object extraction method based on color and texture information. Chinese Journal of Computers, 2009, 32(11): 2252-2259 (穆亚东, 周秉峰. 基于颜色和纹理信息的快速前景提取方法. 计算机学报, 2009, 32(11): 2252-2259) [4] Li H L, Ngan K N. Learning to extract focused objects from low DOF images. IEEE Transactions on Circuits and Systems for Video Technology, 2011, 21(11): 1571-1580 [5] Shi L L, Funt B. Quaternion color texture segmentation. Computer Vision and Image Understanding, 2007, 107(1-2): 88-96 [6] Chen J Q, Pappas T N, Mojsilovic A, Rogowitz B E. Adaptive perceptual color-texture image segmentation. IEEE Transactions on Image Processing, 2005, 14(10): 1524-1536 [7] Wei Wei, Shen Xuan-Jing, Qian Qing-Ji. An adaptive thresholding algorithm based on grayscale wave transformation for industrial inspection images. Acta Automatica Sinica, 2011, 37(8): 944-953(魏巍, 申铉京, 千庆姬. 工业检测图像灰度波动变换自适应阈值分割算法. 自动化学报, 2011, 37(8): 944-953) [8] Fan Jiu-Lun, Lei Bo. Two-dimensional extension of minimum error threshold segmentation method for gray-level images. Acta Automatica Sinica, 2009, 35(4): 386-393(范九伦, 雷博. 灰度图像最小误差阈值分割法的二维推广. 自动化学报, 2009, 35(4): 386-393) [9] Xu Jian, Ding Xiao-Qing, Wang Sheng-Jin, Wu You-Shou. Background subtraction based on a combination of local texture and color. Acta Automatica Sinica, 2009, 35(9): 1145-1150(徐剑, 丁晓青, 王生进, 吴佑寿. 一种融合局部纹理和颜色信息的背景减除方法. 自动化学报, 2009, 35(9): 1145-1150) [10] Deng Y N, Manjunath B S. Unsupervised segmentation of color-texture regions in images and video. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2001, 23(8): 800-810 [11] Allili M S, Ziou D. Globally adaptive region information for automatic color-texture image segmentation. Pattern Recognition Letters, 2007, 28(15): 1946-1956 [12] Ilea D E, Whelan P F. CTex——An adaptive unsupervised segmentation algorithm based on color-texture coherence. IEEE Transactions on Image Processing, 2008, 17(10): 1926-1939 [13] Unnikrishnan R, Pantofaru C, Hebert M. Toward objective evaluation of image segmentation algorithms. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2007, 29(6): 929-944
点击查看大图
计量
- 文章访问数: 2293
- HTML全文浏览量: 82
- PDF下载量: 1863
- 被引次数: 0