Automatic Mango Detection using Image Processing and HOG-SVM

Maria Jeseca C. Baculo, N. Marcos
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引用次数: 3

Abstract

Mango is an agricultural produce with high export value as it is being consumed internationally. To ensure its production yield, the manual handling and classification tasks should be performed with precision and care by local farmers. Image processing and machine learning has improved the way classification, defect detection, and yield approximation are handled. Detection is considered as an initial step prior to performing these tasks. This paper presents an automatic mango detector by combining a Support Vector Machine (SVM) classifier trained with Histogram of Oriented Gradients (HOG) features and image segmentation. The image segmentation performed on both HSV and RGB color spaces using image processing techniques achieved a mean IoU of 0.7938. A HOG-SVM based classifier was trained and achieved an F-score of 89.38%. Results show that combining segmentation with HOG-SVM can detect and localize healthy and defective mango images with different background color and illumination.
基于图像处理和HOG-SVM的芒果自动检测
芒果是一种出口价值很高的农产品,在国际上被广泛消费。为了保证其产量,手工处理和分类任务需要由当地农民精确和小心地完成。图像处理和机器学习改进了分类、缺陷检测和良率近似的处理方式。检测被认为是执行这些任务之前的第一步。本文提出了一种结合HOG特征训练的支持向量机(SVM)分类器和图像分割的芒果自动检测方法。使用图像处理技术在HSV和RGB色彩空间上进行的图像分割实现了0.7938的平均IoU。训练出基于HOG-SVM的分类器,f值为89.38%。结果表明,将分割与HOG-SVM相结合,可以对不同背景颜色和光照下的芒果健康和缺陷图像进行检测和定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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