利用纹理特征预测产量的RGB西瓜无人机检测

IF 0.7 4区 农林科学 Q3 AGRICULTURE, MULTIDISCIPLINARY
A. Ekiz
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引用次数: 0

摘要

配备数码相机的无人机是精准农业所利用的技术之一。在2020年进行的这项研究中,无人机从土耳其阿达纳Sarıçam的西瓜地获得的图像中的西瓜被分割。原始图像有两种处理方式。首先,将图像转换为灰度,然后通过重叠的滑动窗口将其划分为块。从这些块中获得灰度共生矩阵,并计算出六个Haralick纹理特征。然后,通过使用具有径向基核的多类支持向量机,将块划分为土壤、叶子和西瓜三类之一。同时,通过使用k均值聚类将原始图像划分为三组,并选择在其中心具有最高蓝色分量的组。最后,将这两个结果进行融合,以获得图像中可能的西瓜区域。平均分类准确率和未纳入聚类结果的西瓜检出率分别为96.51%和98.50%。融合聚类结果提高了西瓜的检测性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of watermelon in RGB images via unmanned aerial vehicle by utilising texture features for predicting yield
Unmanned aerial vehicles equipped with a digital camera are one of technologies that the precision agriculture takes advantage. In this study conducted in 2020, watermelons in the images obtained by an unmanned aerial vehicle from the watermelon field, which is in Sarıçam, Adana, Turkey, were segmented. The original image was processed in two ways. First, the image was converted to grayscale and then divided into blocks by an overlapping sliding window. The grey level co-occurrence matrixes from these blocks were obtained and six Haralick texture features were computed. Then, blocks were classified to one of three categories, soil, leaf and watermelon, by employing a multiclass support vector machine with radial basis kernel. Meanwhile, the original image was partitioned into three groups by using k-means clustering and the group having the highest blue component at its centre was selected. Finally, the two outcomes were fused to obtain possible watermelon regions in the image. The average categorization accuracy and the rate of detected watermelons without incorporating clustering outcome were 96.51% and 98.50% respectively. The watermelon detection performance was enhanced by fusing the clustering result
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来源期刊
Pakistan Journal of Agricultural Sciences
Pakistan Journal of Agricultural Sciences AGRICULTURE, MULTIDISCIPLINARY-
CiteScore
1.80
自引率
25.00%
发文量
18
审稿时长
6-12 weeks
期刊介绍: Pakistan Journal of Agricultural Sciences is published in English four times a year. The journal publishes original articles on all aspects of agriculture and allied fields.
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