农机化研究
農機化研究
농궤화연구
Journal of Agricultural Mechanization Research
2016年
5期
15-19
,共5页
刁智华%吴贝贝%毋媛媛%赵明珍%钱晓亮%魏玉泉
刁智華%吳貝貝%毌媛媛%趙明珍%錢曉亮%魏玉泉
조지화%오패패%무원원%조명진%전효량%위옥천
精准施药%1.8R-G-B法%骨架提取%最小相切圆%形态学细化
精準施藥%1.8R-G-B法%骨架提取%最小相切圓%形態學細化
정준시약%1.8R-G-B법%골가제취%최소상절원%형태학세화
precision spraying%1.8R-G-B method%skeleton extraction%the minimum tangent circle%morphological thinning
机器视觉的农业导航路径规划是精准施药的关键,而作物行提取是其准确识别作物行路径的基础.为此,以玉米为研究对象,提出了一种基于最小相切圆原理和形态学相结合的作物行检测算法.首先在室外田间环境下采集生长早中期的玉米作物行图像,选择作物行比较规整的图像进行处理;其次,利用改进的超绿灰度化(1.8R-G-B)算法对玉米作物行图像进行灰度化处理,大大减少了噪声的干扰,通过中值滤波基本消除了噪声;然后,运用Otsu阈值算法获取了玉米作物行的二值图像.由于作物行呈线型,在此基础上,采用5×1像素的线型结构元素和3×3像素的方形结构元素两者相结合的方法对二值图像进行腐蚀、膨胀运算,并采用提出的最小相切圆与形态学结合的方法提取中央玉米作物行的骨架并进行中央作物行直线的拟合.实验表明:该算法能提供准确的位置信息,且对作物行边缘噪声具有较强的抗干扰能力,对进一步研究精准施药提供了参考依据.
機器視覺的農業導航路徑規劃是精準施藥的關鍵,而作物行提取是其準確識彆作物行路徑的基礎.為此,以玉米為研究對象,提齣瞭一種基于最小相切圓原理和形態學相結閤的作物行檢測算法.首先在室外田間環境下採集生長早中期的玉米作物行圖像,選擇作物行比較規整的圖像進行處理;其次,利用改進的超綠灰度化(1.8R-G-B)算法對玉米作物行圖像進行灰度化處理,大大減少瞭譟聲的榦擾,通過中值濾波基本消除瞭譟聲;然後,運用Otsu閾值算法穫取瞭玉米作物行的二值圖像.由于作物行呈線型,在此基礎上,採用5×1像素的線型結構元素和3×3像素的方形結構元素兩者相結閤的方法對二值圖像進行腐蝕、膨脹運算,併採用提齣的最小相切圓與形態學結閤的方法提取中央玉米作物行的骨架併進行中央作物行直線的擬閤.實驗錶明:該算法能提供準確的位置信息,且對作物行邊緣譟聲具有較彊的抗榦擾能力,對進一步研究精準施藥提供瞭參攷依據.
궤기시각적농업도항로경규화시정준시약적관건,이작물행제취시기준학식별작물행로경적기출.위차,이옥미위연구대상,제출료일충기우최소상절원원리화형태학상결합적작물행검측산법.수선재실외전간배경하채집생장조중기적옥미작물행도상,선택작물행비교규정적도상진행처리;기차,이용개진적초록회도화(1.8R-G-B)산법대옥미작물행도상진행회도화처리,대대감소료조성적간우,통과중치려파기본소제료조성;연후,운용Otsu역치산법획취료옥미작물행적이치도상.유우작물행정선형,재차기출상,채용5×1상소적선형결구원소화3×3상소적방형결구원소량자상결합적방법대이치도상진행부식、팽창운산,병채용제출적최소상절원여형태학결합적방법제취중앙옥미작물행적골가병진행중앙작물행직선적의합.실험표명:해산법능제공준학적위치신식,차대작물행변연조성구유교강적항간우능력,대진일보연구정준시약제공료삼고의거.
Path planning in agricultural machine vision navigation is the key to accurate spraying, but the crop rows de-tection is the basis for accurate identification of crop rows path.Taking corn as the research object,the paper propose a crop row detection algorithm based on minimum tangent circle and morphology.First,collected corn crop image growing early and middle time in the outdoor environment, choose the crop rows that more structured to process, and secondly,u-sing the improved 1.8R-G-B algorithm to realize gray transformation,greatly reducing the noise and by median filtering eliminate the noise virtually.And then use the Otsu threshold algorithm to obtain a binary image of the corn crop rows. Because crop rows is linear,on this basis, using the method that combine linear structure element 5 ×1 pixel with square structure that 3 ×3 pixel to conduct erosion and dilation.Finally,we use this method based on minimum tangent circle and morphology to detect central line skeleton and fitting the line of the crop.Experiments show that the algorithm can provide accurate location information, and to the noise on the edge of the crop rows has a strong anti-jamming capa-bility, provides reference for further research in precision pesticide.