农业工程学报
農業工程學報
농업공정학보
2013年
1期
164-170
,共7页
李昕%李立君%高自成%易春峰%李庆春
李昕%李立君%高自成%易春峰%李慶春
리흔%리립군%고자성%역춘봉%리경춘
机器视觉%图像识别%Hough 变换%机器人%油茶果
機器視覺%圖像識彆%Hough 變換%機器人%油茶果
궤기시각%도상식별%Hough 변환%궤기인%유다과
computer vision%image recognition%Hough transforms%picking robot%camellia-fruit
为将目标油茶果实从树枝、树叶等外界遮挡中分离出来,以利于油茶采摘机器视觉的图像形态学识别,该文提出了一种改进的类圆随机 Hough 变换算法,在算法中添加了边缘预检测、快速定位圆心点等模块以提高算法的识别率.仿真结果表明,改进算法对遮挡果实的识别率较其他 Hough 遮挡识别算法有所提高,最高达到90.70%,识别时间为1.3 s.该研究为采摘机器人的后续采摘工作打下了基础.
為將目標油茶果實從樹枝、樹葉等外界遮擋中分離齣來,以利于油茶採摘機器視覺的圖像形態學識彆,該文提齣瞭一種改進的類圓隨機 Hough 變換算法,在算法中添加瞭邊緣預檢測、快速定位圓心點等模塊以提高算法的識彆率.倣真結果錶明,改進算法對遮擋果實的識彆率較其他 Hough 遮擋識彆算法有所提高,最高達到90.70%,識彆時間為1.3 s.該研究為採摘機器人的後續採摘工作打下瞭基礎.
위장목표유다과실종수지、수협등외계차당중분리출래,이리우유다채적궤기시각적도상형태학식별,해문제출료일충개진적류원수궤 Hough 변환산법,재산법중첨가료변연예검측、쾌속정위원심점등모괴이제고산법적식별솔.방진결과표명,개진산법대차당과실적식별솔교기타 Hough 차당식별산법유소제고,최고체도90.70%,식별시간위1.3 s.해연구위채적궤기인적후속채적공작타하료기출.
Camellia tree is widely distributed in the south areas of China. When the camellia fruits mature, their colors appear to pink or yellow. These features and interference factors outside will bring troubles for identification and picking of camellia fruits. In order to separate the camellia-fruit from background impurities (branches, leafs, etc), the paper proposed a quasi-circular Randomized Hough Transform (RHT) algorithm. In the modified algorithm, it adds the some model to improve the recognition rates. The detail steps are list as follows:
@@@@In order to reduce computation of quasi-circular RHT algorithm,the classical Sobel operator was used to extract the edge of target binary segmentation image. The Sobel operator is a commonly used edge detection method,the algorithm has the less computation time and faster detection speed,it can reflect the disturbing of target edge nicely,so the algorithm is suitable for detecting camellia fruit edge.
@@@@Quasi-circular RHT algorithm is based on the circular-RHT and circular-detection algorithm research. For the feature of camellia fruit,the algorithm added the model of early-detection, the circular-centre location and the overlapping target merging. Early-detection is considered for the advantage of the quasi-circular geometry feature,the modified algorithm selects the idea of curve slope to approximately reflect the change of the curve-edge. Circular-centre location is the method of refine relative picking points to select circular points compared to the classical RHT. This modification can avoid invalid picking caused by the points compact, first connecting 2 neighbor points as the string of the circular, then selecting the intersection point of two string perpendicular bisectors as the candidate circular centre. Owing to the character of the plant, the camellia fruits central disturbing in the natural environment, so it can not avoid overlapping caused by the camera distance. So the model will merging the heavily overlapped camellia fruits to make picking easy.
@@@@The simulation proved that the image recognition rate is greatly influenced with the illumination for the shielding camellia fruits. In the weak illumination environment, because the camellia fruits and the external target are not clear, it causes low recognition rate. With increasing illumination, the targets in the image became clear, the recognition rate reached up to 90.70% under 10 000 lx illumination. With the illumination increasing again, the images became more and more complicated, and it caused gradually decrease of the recognition rates, the lowest recognition rates was 52.73% under 22 000 lx. The quasi-circular Randomized Hough Transform algorithm is more practical in computer vision systems of camellia fruit picking robot.