检索规则说明:AND代表“并且”;OR代表“或者”;NOT代表“不包含”;(注意必须大写,运算符两边需空一格)
检 索 范 例 :范例一: (K=图书馆学 OR K=情报学) AND A=范并思 范例二:J=计算机应用与软件 AND (U=C++ OR U=Basic) NOT M=Visual
机构地区:[1]中国农业大学水利与土木工程学院,北京100083 [2]天津农学院计算机科学与信息工程系,天津300384
出 处:《农业工程学报》2015年第2期155-161,共7页Transactions of the Chinese Society of Agricultural Engineering
基 金:国家科技支撑计划课题(2014BAD08B05)
摘 要:基于机器视觉的猪体质量估测模型较多,但模型缺乏在实用性、准确性的对比,最佳模型没有定论。该文总结了已有的估测算法,基于79组背部图像面积、实际面积、体长、体宽、体高、臀宽、臀高数据,使用线性回归、幂回归、二次回归、主成分线性回归、RBF(radial basis function,径向基函数)神经网络等方法,重建了13种体质量估测模型,并比较了13种模型的估测精度。结果表明,基于体长、体宽、体高、臀宽和臀高的线性回归模型具有较好的估测精度,估测值与真值的相关系数达到了0.996。利用主成分法去掉体尺的共线性,利用曲线回归解决残差不均匀问题,更加符合猪体质量增长趋势,结果表明基于主成分的幂回归模型具有较高的相关系数和较低的标准估计误差,对于97组数据的估测平均相对误差为2.02%。使用猪场实测24组数据验证模型,估测质量与测量值相关系数为0.97,估测平均相对误差为2.26%,标准差为1.78%,优于基于面积和面积体高结合的估测模型,平均绝对误差为2.08 kg,优于面积体高结合方法的平均绝对误差。试验证明使用多个体尺的主成分幂回归体质量估测模型较为精确,可用于机器视觉估测猪体质量的应用中。Pig’s weight is an important index for farmers to monitor pig’s growth performance and health. Traditional weighting brings lots of stress to animals and stockmen due to manual operation. Pig weighting based on machine vision is a non-intrusive, fast and precise approach, for it can free the farmer from heavy operational labor. The weighting system precision is assured by the estimation model. A lot of estimation models are addressed in pig weighting based on machine vision by researchers and engineers. Both independent variables and modeling approaches would influence the accuracy of estimated weight. In present work, comparison and optimization of the models were conducted, and the best model was validated in the real farm. In the first experiment, four growing pigs were raised from 30 to 124 kg. The feed was suppliedad libitum, and the lighting was in a 12/12 h light/dark cycle. A machine vision system was assembled and installed with two parallel cameras, an RFID (radio frequency identification devices) reader and a PC for capturing live images of pigs automatically. Using the assembled system, the pigs’ back areas were measured. The head and tail of pig in each picture was cut off for pig’s back area calculation. Five indexes of pig body (body length, width, height, hip width, and hip height) were measured manually every day. Linear regression, power regression, quadratic regression, principal component regression and RBF (radial basis function) artificial neural network were used to establish estimation models using the 79 sets of data. Those models were compared using the remaining 97 sets of data. The second experiment was carried out in the real farm to validate the favorable model. Five body indexes of 24 adult pigs were measured three times manually. The results of experiment station showed that all the reestablished models were suitable for pig weight estimation with varied accuracies. Linear regression model based on body sizes was the best one with a correlation coefficient (R2
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在链接到云南高校图书馆文献保障联盟下载...
云南高校图书馆联盟文献共享服务平台 版权所有©
您的IP:216.73.216.147