棕榈油采收管理中的散果和鲜果串检测

M. M. Daud, Z. Kadim, H. W. Hon
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引用次数: 0

摘要

棕榈油行业可以被认为是关键行业之一,特别是在马来西亚和印度尼西亚等亚洲国家。生产流程取决于棕榈油收获管理的效率。采收期的管理包括采收、统计鲜果串(FFB)和生产散果(LF)。因此,在本文中,我们提出了一种能够自动检测和计数FFB和LF产生的方法。所提出的方法由两部分组成:(a)收获前使用图像处理的果粒检测;(b)收获期间使用Faster R-CNN算法的棕榈油树、FFB和抓取器检测。在收获前,果实的数量可以通过果树的状态来确定,要么是准备收获(RTH),要么是不准备收获(NRTH)。如果状态为RTH,则系统执行树检测以进行标记。当他们开始收割时,检测系统会检测到FFB和抓取器。然后,它将跟踪捕捉器,直到与FFB位置重叠。然后,系统将FFB添加到计数模块中。这意味着FFB已经被带到卡车上了。该系统对FFB的检测准确率为96.5%,对抓取器的检测准确率为99.2%,对树木的检测准确率为97.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Loose Fruitlet and Fresh Fruit Bunch Detection for Palm Oil Harvest Management
The palm oil industry can be considered one of the crucial industries, especially in Asian countries like Malaysia and Indonesia. The production flow is depending on the efficiency of the palm oil harvest management. The management during harvest time includes collecting and counting the fresh fruit bunch (FFB) and loose fruitlet (LF) production. Thus, in this paper, we proposed a method that able to detect and count the FFB and LF production automatically. The as-proposed method consisted of two parts: (a) fruitlet detection using an image processing prior to harvest and (b) palm oil tree, FFB, and grabber detection using the Faster R-CNN algorithm during harvest time. During the pre-harvest, the number of fruitlets can be determined through the status of the tree either by ready-to-harvest (RTH) or not ready-to-harvest (NRTH). If the status was RTH, the system performed tree detection for tagging purposes. When they started to harvest, the detection system would detect the FFB and grabber. It would then track the grabber until overlaps with the FFB location. Then, the system would add the FFB to the count module. It means the FFB had been taken to the truck. The as-proposed system achieved the detection accuracy of 96.5% for FFB, 99.2% for grabber, and 97.2% for tree.
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