基于异物百分比的辣椒质量决定因素基于你只看一次(YOLO)

Indra Dwisaputra, Siti Barokah, Muhammad Erfani Ramadhani, Ocsirendi Ocsirendi
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引用次数: 0

摘要

辣椒种子中异物的存在是影响辣椒种子品质的因素之一。邦加的农民把辣椒卖给辣椒收集者。该地区的采集者至今仍未借助其他工具,采用手工方法对辣椒进行检验,因此仍有干叶、干梗等异物。这种方法往往效率低下,因为每个人的精确度都不一样。在这种情况下,我们建议按照国家质量标准(SNI)中规定的辣椒质量标准的确定,根据异物百分比自动确定辣椒的质量。作者使用YOLOv3进行目标检测,这是最快和最准确的目标检测方法之一,优于其他检测算法。但是,YOLOv3需要重型计算机架构。因此,YOLOv3-tiny(更轻的YOLOv3版本)可以作为小型体系结构的解决方案。本研究发现,YOLOv3-tiny模型具有相当高的网络性能值:精度值为0.99,召回值在70%以上,F1得分在80%以上。在根据辣椒标准质量(SNI)测定辣椒质量时,所得值必须低于2%。然后将该检测系统与人工计算目标进行了比较。结果发现,在26个辣椒种子样本中,该系统的检测速度比人工计算快8.97秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determinants of Pepper Quality Based on the Percentage of Foreign Objects Based You Only Look Once (YOLO)
The presence of foreign objects in pepper seeds is one of the things that affect the quality of pepper seeds. Farmers in Bangka sell pepper to pepper collectors. The collectors in this area still inspect the pepper using manual methods without the help of other tools, so there are still foreign objects such as dry leaves or pepper stalks. This method is often inefficient because the precision of each person is different. In this case, we propose to determine the quality of pepper based on the percentage of foreign objects automatically in accordance with the determination of pepper quality standards regulated in the national quality standard (SNI). The authors use YOLOv3 for object detection which is one of the fastest and most accurate object detection methods, outperforming other detection algorithms. However, YOLOv3 requires a heavy computer architecture. Therefore, YOLOv3-tiny, a lighter version of YOLOv3, can be a solution for smaller architectures. This study found that YOLOv3-tiny model has a reasonably high network performance value: precision value of 0.99, recall value above 70%, and F1 score above 80%. While determining the quality of pepper according to the standard quality of pepper (SNI) the value obtained must be below 2%. Then a comparison was made between the detection system and the manual calculation of objects. It was found that in the sample of 26 pepper seeds, the system detected 8.97 seconds faster than manual calculation.
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