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首页> 外文期刊>Biosystems Engineering >Computer vision recognition of stem and calyx in apples using near-infrared linear-array structured light and 3D reconstruction
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Computer vision recognition of stem and calyx in apples using near-infrared linear-array structured light and 3D reconstruction

机译:利用近红外线性阵列结构光和3D重建技术对苹果茎和花萼的计算机视觉识别

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Automatic detection of common defects on apples by computer vision is still a challenge due to the similarity in appearance between true defects and stems/calyxes. Because the stem and calyx present a concave feature in apples, this paper proposes a novel stem and calyx recognition method using a computer vision system combined with near-infrared linear-array structured lighting and 3D reconstruction techniques to reveal this concavity. The 3D surface of the upper half of the inspected apples could be reconstructed by using a single multi-spectral camera and near-infrared linear-array structured light line by line on an adjustable speed conveyor belt. The height information for each pixel could be calculated by triangulation. Stems and calyxes would present a lower height than that of their neighbouring regions due to the local concave surface. In order to recognise the stems and calyxes efficiently, a standard spherical model (without stems and calyxes) is also constructed automatically, adapted to the size and boundary shape of the inspected apple. The difference between the 3D surface reconstruction and standard spherical model provides great potential for the recognition of stems and calyxes in apples. The final stem and calyx recognition algorithm was developed on the ratio images between 3D surface reconstruction images and standard spherical model construction images in gray level. The result had 97.5% overall recognition accuracy for the 100 samples (200 images), indicating that the proposed system and methods could be used for stem and calyx recognition. (C) 2015 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:由于真实缺陷和茎/花萼之间的外观相似,因此通过计算机视觉自动检测苹果上的常见缺陷仍然是一个挑战。由于茎和花萼在苹果中呈现出凹形特征,因此本文提出了一种新颖的茎和花萼识别方法,该方法使用计算机视觉系统结合近红外线性阵列结构照明和3D重建技术来揭示这种凹度。被检苹果上半部的3D表面可以通过使用单个多光谱相机和在可调速传送带上逐行构造近红外线性阵列结构的光来重建。每个像素的高度信息可以通过三角测量来计算。由于局部凹入的表面,茎和花萼的高度将低于其相邻区域的高度。为了有效地识别茎和花萼,还自动构建了一个标准的球形模型(没有茎和花萼),以适应被检查苹果的大小和边界形状。 3D表面重建与标准球形模型之间的差异为识别苹果中的茎和花萼提供了巨大的潜力。最终的茎和花萼识别算法是在3D表面重建图像和标准球形模型构造图像之间的灰度图像上开发的。结果表明,对100个样本(200张图像)的整体识别准确率为97.5%,表明所提出的系统和方法可用于茎和花萼的识别。 (C)2015年。由Elsevier Ltd.出版。保留所有权利。

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