2D/3D Vision-Based Mango's Feature Extraction and Sorting

T. Chalidabhongse, Panitnat Yimyam, P. Sirisomboon
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引用次数: 53

Abstract

This paper describes a vision system that can extract 2D and 3D visual properties of mango such as size (length, width, and thickness), projected area, volume, and surface area from images and use them in sorting. The 2D/3D visual properties are extracted from multiple view images of mango. The images are first segmented to extract the silhouette regions of mango. The 2D visual properties are then measured from the top view silhouette as explained by Yimyam et al. (2005). The 3D mango volume reconstruction is done using volumetric caving on multiple silhouette images. First the cameras are calibrated to obtain the intrinsic and extrinsic camera parameters. Then the 3D volume voxels are crafted based on silhouette images of the fruit in multiple views. After craving all silhouettes, we obtain the coarse 3D shape of the fruit and then we can compute the volume and surface area. We then use these features in automatic mango sorting which we employ a typical backpropagation neural networks. In this research, we employed the system to evaluate visual properties of a mango cultivar called "Nam Dokmai". There were two sets total of 182 mangoes in three various sizes sorted by weights according to a standard sorting metric for mango export. Two experiments were performed. One is for showing the accuracy of our vision-based feature extraction and measurement by comparing results with the measurements using various instruments. The second experiment is to show the sorting accuracy by comparing to human sorting. The results show the technique could be a good alternative and more feasible method for sorting mango comparing to human's manual sorting.
基于2D/3D视觉的芒果特征提取与分类
本文描述了一种视觉系统,该系统可以从图像中提取芒果的二维和三维视觉属性,如大小(长、宽、厚)、投影面积、体积和表面积,并将其用于分类。从芒果的多视图图像中提取其2D/3D视觉属性。首先对图像进行分割,提取芒果的轮廓区域;然后根据Yimyam等人(2005)的解释,从顶视图轮廓测量2D视觉属性。利用体积崩落法对多幅剪影图像进行三维芒果体积重建。首先对相机进行标定,得到相机的内外参数。然后根据多个视图中水果的轮廓图像制作3D体素。在求出所有轮廓后,我们得到水果的粗三维形状,然后我们可以计算体积和表面积。然后,我们将这些特征用于芒果的自动分类,我们采用了典型的反向传播神经网络。在本研究中,我们利用该系统对芒果品种“南多麦”的视觉特性进行了评价。根据芒果出口的标准分拣指标,共有两组共182个不同大小的芒果,按重量进行分拣。进行了两个实验。一个是通过将结果与使用各种仪器的测量结果进行比较,来显示基于视觉的特征提取和测量的准确性。第二个实验是通过与人类分拣的比较来证明分拣的准确性。结果表明,与人工分选相比,该技术是芒果分选的一种较好的替代方法。
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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