农业工程学报
農業工程學報
농업공정학보
2013年
18期
171-178
,共8页
邹修国%丁为民%刘德营%赵三琴
鄒脩國%丁為民%劉德營%趙三琴
추수국%정위민%류덕영%조삼금
农作物%图像识别%分类%BP神经网络%大津法%Hu矩%Zernike矩%Krawtchouk矩%害虫
農作物%圖像識彆%分類%BP神經網絡%大津法%Hu矩%Zernike矩%Krawtchouk矩%害蟲
농작물%도상식별%분류%BP신경망락%대진법%Hu구%Zernike구%Krawtchouk구%해충
crops%image recognition%classification%BP neural network%OTSU%Hu moment%Zernike moment%Krawtchouk moment%insects
针对稻飞虱远程实时识别采集图像质量不高的问题,研究了基于不变矩提取形状特征值对稻飞虱进行分类。采用自行设计的拍摄装置采集稻飞虱图像,进行灰度化后用大津法二值化,再用数学形态学滤波;对二值图像采用Hu矩、改进Hu矩、Zernike矩和Krawtchouk矩4种不变矩分别提取特征值,再用BP神经网络进行训练和测试,以此检测4种矩的提取效果。试验用Matlab2008验证算法,对白背飞虱、褐飞虱和灰飞虱共300个样本进行了训练和测试,结果表明Krawtchouk矩提取稻飞虱图像形状特征值的识别率最高,总体达到了91.7%。该文可为大田中现场识别稻飞虱提供参考。
針對稻飛虱遠程實時識彆採集圖像質量不高的問題,研究瞭基于不變矩提取形狀特徵值對稻飛虱進行分類。採用自行設計的拍攝裝置採集稻飛虱圖像,進行灰度化後用大津法二值化,再用數學形態學濾波;對二值圖像採用Hu矩、改進Hu矩、Zernike矩和Krawtchouk矩4種不變矩分彆提取特徵值,再用BP神經網絡進行訓練和測試,以此檢測4種矩的提取效果。試驗用Matlab2008驗證算法,對白揹飛虱、褐飛虱和灰飛虱共300箇樣本進行瞭訓練和測試,結果錶明Krawtchouk矩提取稻飛虱圖像形狀特徵值的識彆率最高,總體達到瞭91.7%。該文可為大田中現場識彆稻飛虱提供參攷。
침대도비슬원정실시식별채집도상질량불고적문제,연구료기우불변구제취형상특정치대도비슬진행분류。채용자행설계적박섭장치채집도비슬도상,진행회도화후용대진법이치화,재용수학형태학려파;대이치도상채용Hu구、개진Hu구、Zernike구화Krawtchouk구4충불변구분별제취특정치,재용BP신경망락진행훈련화측시,이차검측4충구적제취효과。시험용Matlab2008험증산법,대백배비슬、갈비슬화회비슬공300개양본진행료훈련화측시,결과표명Krawtchouk구제취도비슬도상형상특정치적식별솔최고,총체체도료91.7%。해문가위대전중현장식별도비슬제공삼고。
Aimed at the problem of the quality of images that were acquired by rice planthoppers remote real-time recognition system, the shape feature values which were extracted by invariant moments to recognize a rice planthopper. 160W self-ballasted high-voltage mercury lamp was used in the experiment to lure rice planthoppers to the curtain, then a H-shape mobile photographing device which had been designed independently by us was used to photograph the planthopper image. The device has the advantages of simple structure and low cost. The USB interface camera of this device was less than 600 RMB. It will lay the foundation for the development of a rice planthopper scene recognition system with low cost. The color images which had been photographed were grayed with a weighted formula, and then were subject to binaryzation with an Otsu method. Finally, the algorithms such as morphological operations were used for filtration to get a binary image with better quality. The feature values of the rice planthopper binary images were respectively extracted by four invariant moments:Hu moment, improved Hu moment, Zernike moment, and Krawtchouk moment, and then a BP nerve network was used to train and test the four feature values respectively, so as to detect the recognition effect of extraction feature values of the four moments. Matlab 2008a was used in the experiment. 240 samples of sogatella furcifera, nilaparvata lugens, and small brown planthoppers had been trained, and then an additional 60 samples were selected for testing. The test result was that the overall recognition rate of the Hu moment was only 76.7%, and the recognition rate of the improved Hu moment was 85%, while the recognition rate of the Zernike moment was 86.7%and the recognition rate of the Krawtchouk moment was 91.7%. The recognition rate of the Krawtchouk moment was the best of the four moments. The reason was that the Krawtchouk moment not only reflected the global feature, but exhibits better locality. The experimental result showed that the Krawtchouk moment has the highest recognition rate. It can be used for the extraction of rice planthopper feature values in the real-time system. This study focused on the search of invariant moments to extract good feature values, but the use of a BP neural network classification resulted in a recognition rate of sogatella furcifera and nilaparvata lugens that was not very high. The identification of sogatella furcifera and nilaparvata lugens was worse than that of the small brown planthoppers. It meant that recognition of two kinds of planthoppers based on a BP neural network needs further study.