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基于机器视觉的水稻秧苗图像分割 被引量:7

Machine vision based segmentation algorithm for rice seedling
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摘要 水稻秧苗的识别是水稻插秧机自主导航系统的关键内容之一。针对插秧机机器视觉导航中稻田图像秧苗与背景分割问题,建立了基于RGB(红绿蓝)颜色空间的秧苗表面颜色模型。通过颜色特征对秧苗图像进行处理,使用Photoshop软件获取秧苗部分和背景R,G,B分量值;通过对G-R值与G-B值的分析统计,发现两者之间存在分界关系:各自的权重与各分量的乘积之和为某个定值;为方便分析,选取权值a,b为0.5,即Ex G因子,采用Otsu法获取定值最佳值,最大程度分割出目标和背景。与适合于大多数绿色作物的传统RGB法进行比较,并采用分割质量因子和算法运算时间作为评判标准,分析各算法的综合性能。试验发现,Ex G因子结合Otsu分割法分割效果相对理想、稳定性更高,而且耗时更短。 The recognition of rice seedling is one of the significant parts of autonomous guidance for rice transplan-ting. Considering the segmentation of seedlings and remainder based on machine vision system, a simple dichromatic reflection model was established in RGB color space, which represented that the seedling could be recognized by u-sing its color feature. The values of R, G, B components of seedlings and remainder were obtained in Photoshop soft-ware respectively and analyzed statistically in order to get the relation between them. In order to simplify the compu-ting process, the weight values of a and b were set as 0. 5, ExG index and Otsu method (ExG+Otsu method) which could obtain the optimal threshold were combined to distinguish the seedlings and remainder well. The RGB method and previous ExG+Otsu method were carried out to compare their performance intuitively. Their comprehensive per-formance was evaluated with segmentation quality factor and time consuming. The results have proved that the latter for segmenting was more efficient, highly stable and timesaving.
出处 《浙江农业学报》 CSCD 北大核心 2016年第6期1069-1075,共7页 Acta Agriculturae Zhejiangensis
基金 国家自然科学基金项目(51403005) 国家农业科技成果转化项目(2014C30000162)
关键词 水稻秧苗 ExG因子 OTSU法 图像分割 质量因子 rice seedling ExG index Otsu method image segmentation quality factor
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