农业工程学报
農業工程學報
농업공정학보
2013年
18期
262-268
,共7页
刘璎瑛%丁为民%李毅念%陈建伟%谢琴
劉瓔瑛%丁為民%李毅唸%陳建偉%謝琴
류영영%정위민%리의념%진건위%사금
算法%粮食%图像处理%分选加工%切比雪夫逼近%垩白米%自动检测
算法%糧食%圖像處理%分選加工%切比雪伕逼近%堊白米%自動檢測
산법%양식%도상처리%분선가공%절비설부핍근%성백미%자동검측
algorithm%grain%image processing%sorting processing%chebyshev approximation%chalky rice%automatic detection
垩白米不仅影响稻米的外观品质,还影响米粒的食味品质,降低稻米商品价值。该文以稻米加工中不同稻米籽粒的组合图像为研究对象,给出了基于切比雪夫逼近的垩白自动分割算法和稻米垩白指标测定算法。算法可实现自适应阈值选取,对包含黄米和杂质米的组合米样图像也能实现垩白的完整分割,算法鲁棒性强。按照国家标准要求,选取垩白粒率为40%的100粒稻米进行随机组合抽取来验证算法的准确性和实时性,结果显示垩白粒率检测的准确度为95%,垩白度的计算误差为2.39%,稻米垩白检测平均耗时3.8 ms/粒,算法耗时短适合在线运算。该文算法用于稻米加工中垩白米的分选,可提高加工后稻米的商品价值和食味品质。
堊白米不僅影響稻米的外觀品質,還影響米粒的食味品質,降低稻米商品價值。該文以稻米加工中不同稻米籽粒的組閤圖像為研究對象,給齣瞭基于切比雪伕逼近的堊白自動分割算法和稻米堊白指標測定算法。算法可實現自適應閾值選取,對包含黃米和雜質米的組閤米樣圖像也能實現堊白的完整分割,算法魯棒性彊。按照國傢標準要求,選取堊白粒率為40%的100粒稻米進行隨機組閤抽取來驗證算法的準確性和實時性,結果顯示堊白粒率檢測的準確度為95%,堊白度的計算誤差為2.39%,稻米堊白檢測平均耗時3.8 ms/粒,算法耗時短適閤在線運算。該文算法用于稻米加工中堊白米的分選,可提高加工後稻米的商品價值和食味品質。
성백미불부영향도미적외관품질,환영향미립적식미품질,강저도미상품개치。해문이도미가공중불동도미자립적조합도상위연구대상,급출료기우절비설부핍근적성백자동분할산법화도미성백지표측정산법。산법가실현자괄응역치선취,대포함황미화잡질미적조합미양도상야능실현성백적완정분할,산법로봉성강。안조국가표준요구,선취성백립솔위40%적100립도미진행수궤조합추취래험증산법적준학성화실시성,결과현시성백립솔검측적준학도위95%,성백도적계산오차위2.39%,도미성백검측평균모시3.8 ms/립,산법모시단괄합재선운산。해문산법용우도미가공중성백미적분선,가제고가공후도미적상품개치화식미품질。
The rice chalky portion is defined as the opaque white portion in rice endosperm. Chalky rice not only affects its appearance quality, but also affects its cooking and taste quality, and then reduces the rice commodity price. Therefore, picking chalky grain in the processing of rice sorting has important practical value and economic value. In this paper, different rice combination images appearing in the sorting process was researched, and the rice kernels’ chalky portions were segmented automatically using image processing technology. According to the national standard requirements, chalky degree and chalky rice rate as rice chalky indexes were determined. <br> First, the background image of the multi-grain rice image was segmented automatically in I color channel using an Otsu algorithm. Then, the segmented binary image and the original image were phased to get the rice image while removing the background. Viewing the rice transparent part as background and the rice chalky part as the foreground, the image was automatically segmented again using a Chebyshev approximation algorithm. The fake chalky areas in the image were removed using the area threshold method in a twice segmentation process. In this paper, a rice chalky portion automatic recognition algorithm and a chalky rice index detection algorithm were given and experimentally analyzed from their robustness, accuracy, and time-consuming aspects. The results showed that the algorithm could implement adaptive threshold selection, and realize the chalkiness complete segmentation of a combination image especially an image including yellow rice and rice with impurities, so the algorithm robustness was strong. According to the national standard requirements, one hundred rice kernels with 40%chalky rice rate were selected and different rice kernel images with a random combination were segmented to verify the accuracy and time-consuming of the algorithm. The results were that the chalky rice rate accuracy was 95%and the calculation error of the chalky degree was 2.39%. The chalkiness detection average time of each rice kernel was 3.8 ms, and the algorithm counting time was short and suitable for online operations.