农业工程学报
農業工程學報
농업공정학보
2014年
21期
218-225
,共8页
张水发%王开义%祖琴%黄姗%潘守慧%王志彬%李明远
張水髮%王開義%祖琴%黃姍%潘守慧%王誌彬%李明遠
장수발%왕개의%조금%황산%반수혜%왕지빈%리명원
计算机视觉%图像分割%病害控制%块标记%营养元素缺乏
計算機視覺%圖像分割%病害控製%塊標記%營養元素缺乏
계산궤시각%도상분할%병해공제%괴표기%영양원소결핍
computer vision%image segmentation%disease control%block mark%nutrient deficiency
为了在田间开放环境中有效分割叶片损伤区域,该文结合Canny算子良好的边缘提取能力和叶片局部颜色变化相对较小的特征,提出基于块标记的叶片损伤区域分割方法,用于评价叶片损伤程度。使用 Android系统手机在晴天大田开放环境中采集木耳菜、西红柿、黄瓜、茄子、桃、彩椒和蛾眉豆7种常见农作物叶片图像,在阴天采集丝瓜、葫芦、甜瓜、茄子和黄瓜5种叶片图像,然后进行分割。该分割算法在晴天和阴天总体的平均正确分类率为97.5%,平均错误分类率为0.3%,并且有较好的目标一致性和边缘清晰度。应用系统对叶片损伤程度的评价结果与手工分割比较,在晴天和阴天采集图像上的平均误差分别为2.340%和1.475%,可较好地应用于晴天和阴天环境。该方法可探索应用于田间植物叶片损伤程度评价。
為瞭在田間開放環境中有效分割葉片損傷區域,該文結閤Canny算子良好的邊緣提取能力和葉片跼部顏色變化相對較小的特徵,提齣基于塊標記的葉片損傷區域分割方法,用于評價葉片損傷程度。使用 Android繫統手機在晴天大田開放環境中採集木耳菜、西紅柿、黃瓜、茄子、桃、綵椒和蛾眉豆7種常見農作物葉片圖像,在陰天採集絲瓜、葫蘆、甜瓜、茄子和黃瓜5種葉片圖像,然後進行分割。該分割算法在晴天和陰天總體的平均正確分類率為97.5%,平均錯誤分類率為0.3%,併且有較好的目標一緻性和邊緣清晰度。應用繫統對葉片損傷程度的評價結果與手工分割比較,在晴天和陰天採集圖像上的平均誤差分彆為2.340%和1.475%,可較好地應用于晴天和陰天環境。該方法可探索應用于田間植物葉片損傷程度評價。
위료재전간개방배경중유효분할협편손상구역,해문결합Canny산자량호적변연제취능력화협편국부안색변화상대교소적특정,제출기우괴표기적협편손상구역분할방법,용우평개협편손상정도。사용 Android계통수궤재청천대전개방배경중채집목이채、서홍시、황과、가자、도、채초화아미두7충상견농작물협편도상,재음천채집사과、호호、첨과、가자화황과5충협편도상,연후진행분할。해분할산법재청천화음천총체적평균정학분류솔위97.5%,평균착오분류솔위0.3%,병차유교호적목표일치성화변연청석도。응용계통대협편손상정도적평개결과여수공분할비교,재청천화음천채집도상상적평균오차분별위2.340%화1.475%,가교호지응용우청천화음천배경。해방법가탐색응용우전간식물협편손상정도평개。
Damaged leaf is one of the important factors leading to crop loss. Damaged leaf segmentation provides an important basis for diseased leaf detection, and for proper preventive measures to be taken. Advances in technology have made it possible for a computer with image processing techniques to segment the diseased leaf in an image of a green plant and evaluate the severity of the infestation. The research objects based on image segmentation and processing are the leaves damaged by pests or nutrient deficiency. The procedure of image segmentation algorithm was developed in C++ that targets a diseased green leaf including the normal leaf and diseased regions. In current researches, algorithms based on thresholding or clustering are widely used. Despite of the simplicity and efficiency, the performances of these methods are not satisfactory due to the grayscale overlapping among background, plant leaves and damaged leaves in field environment. In consideration of the stability edge feature of images and the gray value consistency of leaves, a novel method was proposed to segment the damaged leaves in field environment by combining Canny edge detection and block mark, which is robust with respect to the changes in illumination and noises, and efficient to evaluate the damage degree of the leaves. Image processing was used to transform the image to gray scale, extract the Canny edge, perform Canny edge clustering, remove noise, detect the external rectangle, extract connected components which are 4-connected, classify regions, and finally segment the diseased regions of the green leaf. The block mark based algorithm was introduced to segment the damage leaf. The experiments were conducted on Malabar spinach, tomato, cucumber, eggplant, peach, pepper, dolichos lablab images captured on sunny day, and towel gourd, calabash, melon, eggplant and cucumber images captured on cloudy day. (1) The classification accuracy of the Malabar spinach on a sunny day was 98.8%; and 95.4%, 98.5%, 98.4%, 98.8%, 99.1%, 99.5% for tomato, cucumber, towel gourd, peach, pepper, dolichos lablab,,respectively, and the average classification accuracy for the test images was 98.4%. The classification accuracy of the towel gourd on a cloudy day was 96.5%, and 97.1%, 95.6%, 96.4%, 88.5%for calabash, cucumber, melon, eggplant, respectively, and the average for the test images was 96.5%. (2) The classification false rate of the test images captured on a sunny day for the Malabar spinach was 0.3%, and 1.2%, 0.2%, 1.2%, 0.1%, 0.0%, 0.1%for tomato, cucumber, towel gourd, peach, pepper, dolichos lablab, respectively, and the average for the test images was 0.3%. The classification false rate on a cloudy day for the towel gourd was 0.1%, and 0.0%, 0.5%, 0.1%, 0.2%for calabash, cucumber, melon, eggplant, respectively, and the average for the test images was 0.2%. (3) The average false rates on the sunny sets and the cloudy sets for leaves damage degree were 2.340%and 1.475%, respectively. Experimental results showed that the proposed method could effectively separate damaged leaves apart from background. The method provided higher precision as well as the accurate and closed boundaries, which was beneficial to evaluate the damage degree of leaves.