基于图像数据的香蕉高性状采后果实自动鉴别

IF 0.6 Q4 AGRONOMY Agrivita Pub Date : 2022-06-01 DOI:10.17503/agrivita.v44i2.3648
C. Dewi, W. Mahmudy, Solimun Solimun, E. Arisoesilaningsih
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引用次数: 0

摘要

对形状、颜色和果皮纹理高度相似的香蕉品种进行视觉鉴别,需要在收获过程中积累一定的技术和经验,以减少品种识别上的失误。本研究旨在利用香蕉手指图像和计算机视觉技术自动识别相似的香蕉品种。进行鉴定过程以区分两组具有高度相似性的香蕉,即第1组(Ambon, Hijau, Goroho)和第2组(Barlin, Mas)。采用未成熟的Ambon-Hijau-Goroho、成熟的Hijau-Goroho、成熟和未成熟的Barlin-Mas对数据集进行试验。通过试验确定鉴定的性能,找出可作为品种鉴定的最有效性状。使用极限学习机(ELM)进行分类的结果表明,局部二值模式(LBP)提取的纹理特征能够准确区分未成熟的Ambon-Goroho、未成熟的Goroho-Hijau和成熟的Goroho-Hijau,准确率为100%。未成熟的Ambon-Hijau、未成熟的Barlin-Mas和成熟的Barlin-Mas通过形状和果皮纹理特征相结合进行识别,准确率分别为93.39%、89.68%和99.31%。结果表明,该方法可作为香蕉采后自动分选的替代方法。利用香蕉的形状和果皮纹理特征对相似度较高的香蕉品种进行了有效的区分。
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Automatic Differentiating of Postharvest Banana Fruits with High Traits Using Imagery Data
Visually differentiating banana cultivar with high similarity in shape, color and peel texture requires skill and experience during harvesting to reduce mistake on identifying cultivar. This study aims to identify automatically some similar banana cultivars using banana finger imagery and computer vision. The identification process was carried out to distinguish two groups of bananas with high similarities, namely group 1 (Ambon, Hijau, Goroho) and group 2 (Barlin, Mas). The test was conducted on the pair of datasets of unripe Ambon-Hijau-Goroho, ripe Hijau-Goroho, ripe and unripe Barlin-Mas. Testing was done to determine the performance of identification and to find out the most effective characteristics that could be used as cultivar identification. Results of classification using extreme learning machine (ELM) showed that texture features extracted from local binary pattern (LBP) could accurately distinguish unripe Ambon-Goroho, unripe Goroho-Hijau, ripe Goroho-Hijau with 100% accuracy. While unripe Ambon-Hijau, unripe Barlin-Mas and ripe Barlin-Mas could be optimally distinguished using a combination of shape and peel texture features with accuracy of 93.39%, 89.68%, 99.31% respectively. This result indicated that the proposed method could be used as an alternative of automatic banana sortation during post-harvest. The use of shape and peel texture features had shown effectively differentiating these high similarity banana cultivars.
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来源期刊
Agrivita
Agrivita AGRONOMY-
CiteScore
2.20
自引率
12.50%
发文量
62
审稿时长
18 weeks
期刊介绍: The aims of the journal are to publish and disseminate high quality, original research papers and article review in plant science i.e.: -agronomy -horticulture -plant breeding -soil sciences -plant protection -other pertinent field related to plant production
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