农业工程学报
農業工程學報
농업공정학보
2015年
3期
221-227
,共7页
周金辉%马钦%朱德海%郭浩%王越%张晓东%李绍明%刘哲
週金輝%馬欽%硃德海%郭浩%王越%張曉東%李紹明%劉哲
주금휘%마흠%주덕해%곽호%왕월%장효동%리소명%류철
机器视觉%图像处理%无损检测%玉米%种子%穗行数%行粒数
機器視覺%圖像處理%無損檢測%玉米%種子%穗行數%行粒數
궤기시각%도상처리%무손검측%옥미%충자%수행수%행립수
computer vision%image processing%nondestructive examination%maize%seeds%ear rows%row grains
玉米果穗的穗长、穗粗、穗行数、行粒数等性状是制约玉米产量的重要组分性状,目前主要采用人工测量方式,或通过截取果穗横断面图像自动计算穗行数等参数,操作复杂、测量效率低、主观误差大,且无法保留完整的原始考种材料。针对上述问题,该文基于机器视觉技术,通过可见光二维成像获取果穗三维表型性状参数,结合果穗颜色特征及果穗的生物学规律,分别建立投影修正模型、穗行数快速估算模型、行粒数计算模型等,精确计算穗长、穗粗、穗行数以及行粒数等性状参数。试验结果表明,该方法适用于粘连果穗处理,秃尖的识别率高,且对光照环境要求低,穗行数及行粒数的零误差率在93%以上,测量速度可达30穗/min以上,能够满足高通量考种的需求,特别是保留了原始果穗考种材料实现无损测量,对于实现高通量考种及精细化育种有重要的参考价值。
玉米果穗的穗長、穗粗、穗行數、行粒數等性狀是製約玉米產量的重要組分性狀,目前主要採用人工測量方式,或通過截取果穗橫斷麵圖像自動計算穗行數等參數,操作複雜、測量效率低、主觀誤差大,且無法保留完整的原始攷種材料。針對上述問題,該文基于機器視覺技術,通過可見光二維成像穫取果穗三維錶型性狀參數,結閤果穗顏色特徵及果穗的生物學規律,分彆建立投影脩正模型、穗行數快速估算模型、行粒數計算模型等,精確計算穗長、穗粗、穗行數以及行粒數等性狀參數。試驗結果錶明,該方法適用于粘連果穗處理,禿尖的識彆率高,且對光照環境要求低,穗行數及行粒數的零誤差率在93%以上,測量速度可達30穗/min以上,能夠滿足高通量攷種的需求,特彆是保留瞭原始果穗攷種材料實現無損測量,對于實現高通量攷種及精細化育種有重要的參攷價值。
옥미과수적수장、수조、수행수、행립수등성상시제약옥미산량적중요조분성상,목전주요채용인공측량방식,혹통과절취과수횡단면도상자동계산수행수등삼수,조작복잡、측량효솔저、주관오차대,차무법보류완정적원시고충재료。침대상술문제,해문기우궤기시각기술,통과가견광이유성상획취과수삼유표형성상삼수,결합과수안색특정급과수적생물학규률,분별건립투영수정모형、수행수쾌속고산모형、행립수계산모형등,정학계산수장、수조、수행수이급행립수등성상삼수。시험결과표명,해방법괄용우점련과수처리,독첨적식별솔고,차대광조배경요구저,수행수급행립수적령오차솔재93%이상,측량속도가체30수/min이상,능구만족고통량고충적수구,특별시보류료원시과수고충재료실현무손측량,대우실현고통량고충급정세화육충유중요적삼고개치。
The maize variety test is an important link in the process of crop genetic breeding. The different maize varieties will produce a large number of varieties phenotype data, which need to be collected, collated, recorded, statistically analyzed and stored. Some phenotype data are related to the maize yield, such as bald rate, ear rows, row grains and so on. These maize characters are often collected by the traditional manual measurement at present. For example, the ear rows can be calculated by the maize section image which destroys the maize to be tested .Another measurement method for the ear rows is to rotate and scan the maize, which is very difficult to meet the needs of high throughput maize variety test. Aiming at the above problems, the calculation model according to the color and biological features of maize has been constructed based on the machine vision technology in this paper. The calculation model can compute the maize character parameters precisely, such as bald rate, ear rows, row grains and so on. The experimental results show that the calculation measurement has the high recognition precision and speed. The ear length ,ear diameter ,ear rows ,row grains and other yield components are taken as example for verifying the above calculation model in this paper. The experimental environment settings for image acquisition model are as follows: non wide-angle CMOS pinhole camera (portable, low cast), acquisition environment of soft light and bright place (no special light source set). The camera is 5 million pixels, and the image resolution is 2942 pixels× 1944 pixels. Shoot height is 55 cm, the shooting format is to A3. The algorithm is tested by the PC machine which is configured as a dual core cpu (1.9 GHz) and 2 GB ram. The method presented in this paper can overcome these disadvantages of traditional manual measurement, such as low efficiency, subjective error, and unable to retain the integrity of the original maize material. The method presented in this paper can fetch the parameters of 3D phenotypic traits based on the 2D visible light imaging, and separately establish the projection correction model, the rapid estimation model and the calculation model for ear rows and row grains .The method presented in this paper can calculate the ear length, ear diameter (the calculation accuracy can reach more than 97 percent), ear rows and row grains of maize accurately. The zero error rates of ear rows measured by the method presented in this paper can reach 93 percent, and the absolute error of row grains measured by the method presented in this paper is about 2 grains. In this paper, the acquisition speed for the maize characters also has been tested, and the experimental results show that the measurement speed is up to 30 per minute above. With the promotion of the PC machine parameters, the measuring speed can be greatly improved. The methods proposed in this paper have important reference value to achieve the high throughput test and fine breeding.