3D reconstruction and feature extraction for agricultural produce grading

Panitnat Yimyam, A. Clark
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引用次数: 4

Abstract

This paper examines the grading of agricultural produce from multiple images using colour and texture properties. Some types of agricultural produce need to be inspected from multiple views in order to assess the entire appearance; however, using multiple images may obtain redundant data. Therefore, techniques are presented to reconstruct a 3D object, create new images without duplicated object areas and extract colour and texture features for evaluation. The performance of using multiple view images without duplicated object regions is compared with those of using only top-view images and the original multiple view images. Experiments are performed on apple and guava grading using kNN, NN, SVM and GP for classification. Performance differences from the different image sets are compared using McNemar's test and the Friedman test. It is found that the performance when using multiple view images is superior to that when using single-view images for all experiments. Employing features extracted from multiple view images without object area duplication achieves significantly higher accuracy than employing the original multiple view images for apple grading, but their performances do not differ significantly for guava inspection.
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农产品分级的三维重建与特征提取
本文研究了利用颜色和纹理属性从多个图像中对农产品进行分级。有些类型的农产品需要从多个角度进行检验,以评估其整体外观;但是,使用多个图像可能会获得冗余数据。因此,提出了重建三维物体、创建没有重复物体区域的新图像以及提取颜色和纹理特征以供评估的技术。比较了不使用重复目标区域的多视图图像与仅使用顶视图图像和原始多视图图像的性能。利用kNN、NN、SVM和GP对苹果和番石榴进行了分级实验。使用McNemar测试和Friedman测试比较不同图像集的性能差异。在所有实验中,使用多视图图像的性能都优于使用单视图图像的性能。在苹果分级中,采用多视图图像提取特征而不重复目标区域,其准确率明显高于原始多视图图像,但在番石榴检测中,两者的性能差异不显著。
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