农业工程学报
農業工程學報
농업공정학보
Transactions of the Chinese Society of Agricultural Engineering
2015年
21期
198-204
,共7页
陈子文%李南%李涛%张春龙%孙哲%李伟%张宾%张俊雄
陳子文%李南%李濤%張春龍%孫哲%李偉%張賓%張俊雄
진자문%리남%리도%장춘룡%손철%리위%장빈%장준웅
机器视觉%优化%算法%株间锄草%里程值%传感器融合%模糊校正%锄草刀定位
機器視覺%優化%算法%株間鋤草%裏程值%傳感器融閤%模糊校正%鋤草刀定位
궤기시각%우화%산법%주간서초%리정치%전감기융합%모호교정%서초도정위
computer vision%optimization%algorithms%intra-row weeding%odometry%sensor fusion%fuzzy correction%weeding hoe positioning
为提高株间锄草刀定位精度、降低机器视觉受外界因素的影响,该文提出里程信息融合机器视觉的方法对锄刀定位数据进行优化。通过分析定位数据校正和视觉滞后补偿的原理,设计了模糊逻辑校正器,通过模糊规则将模糊校正系统简化为单输入单输出形式,采用Mamdani模糊推理方法获得视觉数据可信度决策表,将可信度作为加权值生成校正锄刀定位数据,并提出采用实时里程信息作为视觉滞后补偿量的方法,给出补偿公式。田间刀苗距优化静态试验表明,视觉刀苗距误差为9.88 mm,优化后刀苗距误差为6.06 mm;动态试验表明,视觉数据出错率为4.8%~6.6%,刀苗距变化曲线显示,优化方法可有效过滤视觉坏点或不稳定的数据点,将视觉滞后纳入衡量标准,不同车速下动态优化后刀苗距平均误差为5.30~7.08 mm,较优化前降低了25%左右。研究结果表明,锄草刀定位数据优化方法可有效提高机器视觉静态和动态获取刀苗距的精度。该研究为提高株间锄草技术的锄刀定位精度提供了参考。
為提高株間鋤草刀定位精度、降低機器視覺受外界因素的影響,該文提齣裏程信息融閤機器視覺的方法對鋤刀定位數據進行優化。通過分析定位數據校正和視覺滯後補償的原理,設計瞭模糊邏輯校正器,通過模糊規則將模糊校正繫統簡化為單輸入單輸齣形式,採用Mamdani模糊推理方法穫得視覺數據可信度決策錶,將可信度作為加權值生成校正鋤刀定位數據,併提齣採用實時裏程信息作為視覺滯後補償量的方法,給齣補償公式。田間刀苗距優化靜態試驗錶明,視覺刀苗距誤差為9.88 mm,優化後刀苗距誤差為6.06 mm;動態試驗錶明,視覺數據齣錯率為4.8%~6.6%,刀苗距變化麯線顯示,優化方法可有效過濾視覺壞點或不穩定的數據點,將視覺滯後納入衡量標準,不同車速下動態優化後刀苗距平均誤差為5.30~7.08 mm,較優化前降低瞭25%左右。研究結果錶明,鋤草刀定位數據優化方法可有效提高機器視覺靜態和動態穫取刀苗距的精度。該研究為提高株間鋤草技術的鋤刀定位精度提供瞭參攷。
위제고주간서초도정위정도、강저궤기시각수외계인소적영향,해문제출리정신식융합궤기시각적방법대서도정위수거진행우화。통과분석정위수거교정화시각체후보상적원리,설계료모호라집교정기,통과모호규칙장모호교정계통간화위단수입단수출형식,채용Mamdani모호추리방법획득시각수거가신도결책표,장가신도작위가권치생성교정서도정위수거,병제출채용실시리정신식작위시각체후보상량적방법,급출보상공식。전간도묘거우화정태시험표명,시각도묘거오차위9.88 mm,우화후도묘거오차위6.06 mm;동태시험표명,시각수거출착솔위4.8%~6.6%,도묘거변화곡선현시,우화방법가유효과려시각배점혹불은정적수거점,장시각체후납입형량표준,불동차속하동태우화후도묘거평균오차위5.30~7.08 mm,교우화전강저료25%좌우。연구결과표명,서초도정위수거우화방법가유효제고궤기시각정태화동태획취도묘거적정도。해연구위제고주간서초기술적서도정위정도제공료삼고。
The accurate positioning data of intra-row weeding hoe can provide the basis for intelligent intra-row weeding robot and influence the effects of weeding directly. The main method of crop and weed information acquisition is based on computer vision which has excellent real-time performance, high accuracy, low cost and other benefits. But light intensity, appearance of the crop, shadow, missing plant, weed density, mechanical vibration or other conditions could degrade the performance of machine vision. This work describes an optimization method which includes the correction algorithm and the visual lag compensation algorithm based on the fusion of odometry and computer vision for improving the accuracy of intra-row hoe positioning data. In this work, the fuzzy corrector was designed for fusing odometry data and vision data. Fuzzy correction system was simplified as a form of single input and single output by the fuzzy rules achieved earlier. The Mamdani fuzzy inference method was used to obtain the reliability and weighted value of vision data, and then, a new corrected positioning data could be created by weighted values of 2 sensors. Because of the time-consuming problem in image processing, the hoe positioning data received by processor and the actual hoe positioning data were not equal. Using odometry information which could be calculated by the pulse signal of rotary encoder as a compensation of visual delay was proposed and the formula for calculating compensation was given. To assess the performance of optimization method, 2 sets of field experiments which consisted of static and dynamic tests were designed for detecting the correction accuracy and the compensation precision. The hoe positioning optimization system was equipped with the weeding robot which was connected with tractor by the front three point linkage system. In the static trails the tractor was randomly stopped, and the vision data and optimized data of hoe position were received by processor; then the distance from hoe to crop was measured as a standard for calculating the error of 2 sets of data. Experimental results showed that the average errors for vision data and optimized data were 9.88 and 6.06 mm respectively, and the error after optimization decreased compared to that before optimization. In dynamic experiment, hoe positioning data were collected in real time and the curve of data change was drawn. Curve analysis showed that the error rate of vision data was 4.8%-6.6% and optimization method could effectively filter the error and unstable vision data points. The average error of optimized data was 5.30-7.08 mm at different speeds, about 25% less than before. Research results showed that the error data would occur in intra-row weeding system based on machine vision in the field environment. The fuzzy correction algorithm and the visual lag compensation algorithm could effectively judge and filter the wrong visual data points and improve the accuracy of hoe positioning data and the stability of system under static and dynamic conditions. The method mentioned in this paper can provide the theoretical basis for precise hoe positioning of intra-row weeding technique and the technical reference for the related researches on weeding robot.