利用机器视觉技术无损估计韩国猪胴体瘦肉产量。

Q2 Agricultural and Biological Sciences Korean Journal for Food Science of Animal Resources Pub Date : 2018-10-01 Epub Date: 2018-10-31 DOI:10.5851/kosfa.2018.e44
Santosh Lohumi, Collins Wakholi, Jong Ho Baek, Byeoung Do Kim, Se Joo Kang, Hak Sung Kim, Yeong Kwon Yun, Wang Yeol Lee, Sung Ho Yoon, Byoung-Kwan Cho
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引用次数: 9

摘要

在本文中,我们报告了使用机器视觉技术对韩国猪胴体和主要切口的瘦肉百分比(LMP)的无损预测模型的发展。VCS2000是肉制品行业常用的视觉系统,安装在现代韩国屠宰场,使用3台摄像机对175头猪(阉割的公猪86头,母猪89头)的一半尸体进行了拍摄。将成像的胴体分为校正组(n=135)和验证组(n=39),利用多元线性回归(MLR)分析从校正组建立预测方程。然后用一个独立的验证集来评估预测方程的效率。我们发现,基于6个变量的预测方程(用于估计整个胴体的LMP)的决定系数(Rv 2)为0.77(均方根误差[RMSEV]为2.12%)。此外,主要部位:火腿、腹部和肩部的预测LMP值Rv 2值≥0.8(腰部0.73),RMSEV值较低。然而,对于里脊肉的切割精度较低(Rv(2) =0.67)。这些结果表明,使用本文开发的基于vcs2000的预测方程可以成功地预测韩国猪胴体和主要切口的LMP。这项技术的最大优点是兼容性和速度,因为VCS2000成像系统可以安装在任何屠宰场,只需稍加修改,就可以在线实时预测猪胴体中的LMP。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Nondestructive Estimation of Lean Meat Yield of South Korean Pig Carcasses Using Machine Vision Technique.

In this paper, we report the development of a nondestructive prediction model for lean meat percentage (LMP) in Korean pig carcasses and in the major cuts using a machine vision technique. A popular vision system in the meat industry, the VCS2000 was installed in a modern Korean slaughterhouse, and the images of half carcasses were captured using three cameras from 175 selected pork carcasses (86 castrated males and 89 females). The imaged carcasses were divided into calibration (n=135) and validation (n=39) sets and a multilinear regression (MLR) analysis was utilized to develop the prediction equation from the calibration set. The efficiency of the prediction equation was then evaluated by an independent validation set. We found that the prediction equation-developed to estimate LMP in whole carcasses based on six variables-was characterized by a coefficient of determination (Rv 2 ) value of 0.77 (root-mean square error [RMSEV] of 2.12%). In addition, the predicted LMP values for the major cuts: ham, belly, and shoulder exhibited Rv 2 values≥0.8 (0.73 for loin parts) with low RMSEV values. However, lower accuracy (Rv (2) =0.67) was achieved for tenderloin cuts. These results indicate that the LMP in Korean pig carcasses and major cuts can be predicted successfully using the VCS2000-based prediction equation developed here. The ultimate advantages of this technique are compatibility and speed, as the VCS2000 imaging system can be installed in any slaughterhouse with minor modifications to facilitate the on-line and real-time prediction of LMP in pig carcasses.

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