A REVIEW OF NON-DESTRUCTIVE RIPENESS CLASSIFICATION TECHNIQUES FOR OIL PALM FRESH FRUIT BUNCHES

IF 1.3 4区 农林科学 Q2 Agricultural and Biological Sciences Journal of Oil Palm Research Pub Date : 2022-09-30 DOI:10.21894/jopr.2022.0063
Mohamed Yasser MOHAMED AHMED MANSOUR
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Abstract

Grading of oil palm fresh fruit bunches (FFB) is commonly conducted using visual inspection by trained workers who inspect the oil palm FFB according to the colour and the number of the loose fruits on the ground. However, this method is labour intensive and time consuming. In addition, the workers may misclassify the fruit’s ripeness due to the height of the tree, miscounting the loose fruits, unclear vision of the bunches on the tree and lighting conditions. Unripe or overripe bunches result in a less efficient palm oil refining process, low palm oil quality and profit losses. Non-destructive techniques can offer better solutions for ripeness classifications with higher accuracy. The techniques are field and lab spectroscopy, computer vision, hyperspectral imaging, laser-light backscattering imaging and fruit battery sensor. Spectroscopy, hyperspectral imaging and laser-light backscattering imaging techniques need to be deployed with a special set up which may not be suitable for real-time ripeness classification. Computer vision, using image processing techniques and machine learning algorithms allow real-time in-situ ripeness classification via mobile devices. This article aims to review the feasibility of each method to allow real-time in-situ ripeness classification of the oil palm fruit bunches with high accuracy.
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油棕鲜果束无损成熟度分级技术研究进展
油棕新鲜果束(FFB)的分级通常由训练有素的工人进行目视检查,他们根据地面上松散水果的颜色和数量检查油棕新鲜果束。然而,这种方法是劳动密集型和耗时的。此外,由于树的高度,工人们可能会错误地分类果实的成熟度,错误地计算松散的果实,不清楚树上的束和光照条件。未成熟或过熟的棕榈油串导致棕榈油精炼过程效率较低,棕榈油质量低和利润损失。非破坏性技术可以为成熟度分类提供更好的解决方案,具有更高的准确性。这些技术包括现场和实验室光谱学、计算机视觉、高光谱成像、激光后向散射成像和水果电池传感器。光谱学、高光谱成像和激光后向散射成像技术需要配备特殊的设备,这可能不适合实时成熟度分类。使用图像处理技术和机器学习算法的计算机视觉可以通过移动设备进行实时的原位成熟度分类。本文旨在综述各种方法的可行性,以实现油棕果束的实时、高精度的原位成熟度分类。
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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来源期刊
Journal of Oil Palm Research
Journal of Oil Palm Research 农林科学-食品科技
CiteScore
2.60
自引率
30.80%
发文量
69
审稿时长
>12 weeks
期刊介绍: JOURNAL OF OIL PALM RESEARCH, an international refereed journal, carries full-length original research papers and scientific review papers on various aspects of oil palm and palm oil and other palms. It also publishes short communications, letters to editor and reviews of relevant books. JOURNAL OF OIL PALM RESEARCH is published four times per year, i.e. March, June, September and December.
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