基于图像颜色分割和果皮纹理分析的西瓜成熟度自动测定

M. Phothisonothai, S. Tantisatirapong, A. Aurasopon
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引用次数: 3

摘要

西瓜普遍种植和消费在大多数热带地区的农业国家,特别是在亚洲国家。质量控制对于规范生产,特别是基于计算机视觉的自动化系统的生产过程具有重要意义。因此,本文基于k-means聚类的颜色分割和LoG滤波的果皮纹理分析,对西瓜成熟度进行了客观的研究。我们拍摄了20个西瓜(Kinnaree品种)的每张图片,这些西瓜由一位经验丰富的农民分为十个成熟和未成熟的组。对不同的实验条件进行了比较,得出了最佳的实验结果。实验结果表明,所提出的特征可以提取不同成熟度水平,p < 0.001。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated determination of watermelon ripeness based on image color segmentation and rind texture analysis
Watermelons are popularly grown and consumed in most tropical areas of agricultural countries especially in the Asian countries. Quality control is important to standardize the production especially the procedure of automatic system based on computer vision. In this paper, therefore, we objectively investigated the ripeness of watermelon based on color segmentation using k-means clustering and rind texture analysis using Laplacian of Gaussian (LoG) filter. We captured each image of 20 watermelons (Kinnaree variety), which are divided into ten ripe and unripe groups by an experienced farmer. Different experimental conditions were compared to achieve the optimal outcome. The experimental results showed that the proposed features could extract different ripeness levels statistically with p < 0.001.
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