首页> 外文期刊>Computers and Electronics in Agriculture >Development of an automatic grading machine for oil palm fresh fruits bunches (FFBs) based on machine vision.
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Development of an automatic grading machine for oil palm fresh fruits bunches (FFBs) based on machine vision.

机译:基于机器视觉的油棕新鲜水果束(FFBS)的自动分级机的开发。

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Despite being the main oil palm (Elaeis guineensis Jacq.) producer in the world, Indonesia still has scope to improve its productivity, which is currently limited by inconsistency in manual grading through human visual inspection. In this research, an automatic grading machine for oil palm fresh fruits bunch (FFB) is developed based on machine-vision principles of non-destructive analytical grading, using Indonesian Oil Palm Research Institute (IOPRI) standard. It is the first automatic grading machine for FFBs in Indonesia that works on-site. Machine consists of four subsystems namely mechanical, image processing, detection and controlling. The samples used were tenera variety fruit bunches from 7 to 20year old trees. Statistical analysis was performed to generate stepwise discrimination using Canonical Discriminant with Mahalanobis distance function for classifying groups, and appoint cluster center for each fraction. Results showed adaptive threshold algorithm gave 100% success rate for background removal, and texture analysis showed object of interest lies in intensity within digital number (DN) value from 100 to 200. Group classification of FFBs resulted average success rate of 93.53% with SEC of 0.4835 and SEP of 0.5165, while fraction classification had average success rate of 88.7%. Eight models are proposed to estimate weight of FFBs with average R2 of 81.39%. FFBs orientation on conveyor belt showed no influence on the sorting result, and with examination time of 1 FFB/5s, machine performs more than 12tons FFBs grading per hour
机译:尽管是世界上的主要油棕(ElaeisGuineensis Jacq.)生产者,但印度尼西亚仍然具有提高其生产率的范围,目前通过人类目视检查的手工分级不一致。在本研究中,基于非破坏性分析分级的机器视觉原理开发了一种用于油棕新鲜水果束(FFB)的自动分级机,采用印度尼西亚油棕研究所(IOPRI)标准。它是印度尼西亚的第一批用于FFB的自动分级机。机器由四个子系统组成,即机械,图像处理,检测和控制。使用的样品是Tenera品种果实,从7到20年的旧树木。进行统计分析以使用与Mahalanobis距离函数的规范判别用于分类组的逐步判别,并为每个分数指定集群中心。结果显示自适应阈值算法给出了100%的背景去除率的成功率,并且纹理分析显示了兴趣对象,数字数量(DN)值的强度为100至200. FFB的组分类导致平均成功率为93.53% 0.4835和90.5165,而分数分类平均成功率为88.7%。提出八种模型来估计FFB的重量,平均R 2 为81.39%。传送带上的FFB取向对排序结果没有影响,并且在1 FFB / 5S的检查时间,机器每小时执行超过12吨FFB分级

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