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Image segmentation of overlapping leaves based on Chan–Vese model and Sobel operator 被引量:9

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摘要 To improve the segmentation precision of overlapping crop leaves,this paper presents an effective image segmentation method based on the Chan–Vese model and Sobel operator.The approach consists of three stages.First,a feature that identifies hues with relatively high levels of green is used to extract the region of leaves and remove the background.Second,the Chan–Vese model and improved Sobel operator are implemented to extract the leaf contours and detect the edges,respectively.Third,a target leaf with a complex background and overlapping is extracted by combining the results obtained by the Chan–Vese model and Sobel operator.To verify the effectiveness of the proposed algorithm,a segmentation experiment was performed on 30 images of cucumber leaf.The mean error rate of the proposed method is 0.0428,which is a decrease of 6.54%compared with the mean error rate of the level set method.Experimental results show that the proposed method can accurately extract the target leaf from cucumber leaf images with complex backgrounds and overlapping regions.
出处 《Information Processing in Agriculture》 EI 2018年第1期1-10,共10页 农业信息处理(英文)
基金 This study was supported by the National Natural Science Foundation of China(No.61403035) Natural Science Foundation of Beijing Municipality(No.9152009) Science and Technology Innovation Ability Construction Project of Beijing Academy of Agriculture and Forestry Science(No.KJCX20170206).
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  • 1邓小炼,王长耀,王汶,张庆员,李向军.一种遥感影像地面控制点动态模板匹配算法[J].国土资源遥感,2005,17(2):7-11. 被引量:3
  • 2张红霞,张铁中,宋健.一种快速农田目标分割方法的实现[J].潍坊学院学报,2006,6(4):1-3. 被引量:5
  • 3张志斌,罗锡文,李庆,王在满,赵祚喜.基于良序集和垄行结构的农机视觉导航参数提取算法[J].农业工程学报,2007,23(7):122-126. 被引量:19
  • 4Andersen, Granum H. Classifying illumination condition from two light sources by colour histogram assessment[J]. J. Optical Soc.Am.A, 2000, 17(4): 667-676.
  • 5Marchant J, Andersen H, Onyango C. Evaluation of an imaging sensor for detecting vegetation using different waveband combination[J]. Computer and Electronics in Agriculture, 2001, 32(2): 101 - 117.
  • 6Onyango C, Marchant J. Physics-based colour image segmentation for scenes containting vegetation and soil[J]. Image and Vision Computing, 2001, 19(8): 523-538.
  • 7Sogaard H T, Olsen H J. Determination of crop rows by image analysis without segmentation[J]. Computers and Electronics in Agriculture, 2003, 38(2): 131 - 158.
  • 8Bunting P, Lucas R. The delineation of tree crowns in Australian mixed species forests using hyperspectral compact airborne spectrographic imager (CASI) data[J]. Remote Sensing of Environment, 2006, 101(2): 230-248.
  • 9Gee Ch, Bossu J, Jones G, et al. Crop/weed discrimination in perspective agronomic images[J]. Computers and Electronicsin Agriculture, 2008, 60(1): 49-59.
  • 10Astrand B, Baerveldt A. An agricultural mobile robot with vision-based perception for mechanical weed control[J]. Autonomous robots, 2002, 13(1): 21 -35.

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