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Digitization and Visualization of Greenhouse Tomato Plants in Indoor Environments

机译:室内环境下温室番茄植物的数字化和可视化

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摘要

This paper is concerned with the digitization and visualization of potted greenhouse tomato plants in indoor environments. For the digitization, an inexpensive and efficient commercial stereo sensor—a Microsoft Kinect—is used to separate visual information about tomato plants from background. Based on the Kinect, a 4-step approach that can automatically detect and segment stems of tomato plants is proposed, including acquisition and preprocessing of image data, detection of stem segments, removing false detections and automatic segmentation of stem segments. Correctly segmented texture samples including stems and leaves are then stored in a texture database for further usage. Two types of tomato plants—the cherry tomato variety and the ordinary variety are studied in this paper. The stem detection accuracy (under a simulated greenhouse environment) for the cherry tomato variety is 98.4% at a true positive rate of 78.0%, whereas the detection accuracy for the ordinary variety is 94.5% at a true positive of 72.5%. In visualization, we combine L-system theory and digitized tomato organ texture data to build realistic 3D virtual tomato plant models that are capable of exhibiting various structures and poses in real time. In particular, we also simulate the growth process on virtual tomato plants by exerting controls on two L-systems via parameters concerning the age and the form of lateral branches. This research may provide useful visual cues for improving intelligent greenhouse control systems and meanwhile may facilitate research on artificial organisms.
机译:本文涉及室内环境下盆栽温室番茄植物的数字化和可视化。为了进行数字化,使用了一种廉价且高效的商业立体声传感器(Microsoft Kinect)来将有关番茄植物的视觉信息与背景分开。基于Kinect,提出了一种可自动检测和分割番茄植株茎的4步方法,包括图像数据的采集和预处理,茎段的检测,消除错误检测以及茎段的自动分割。然后将正确分割的纹理样本(包括茎和叶)存储在纹理数据库中,以备将来使用。本文研究了两种番茄植物-樱桃番茄和普通番茄。樱桃番茄品种的茎检出准确率(在模拟温室环境下)为98.4%,真实阳性率为78.0%,而普通品种的茎检出准确度为94.5%,真实阳性率为72.5%。在可视化中,我们结合了L系统理论和数字化的番茄器官纹理数据,以构建能够实时显示各种结构和姿势的逼真的3D虚拟番茄植物模型。特别是,我们还通过关于年龄和侧枝形式的参数对两个L系统施加控制,从而模拟了虚拟番茄植物的生长过程。这项研究可以为改善智能温室控制系统提供有用的视觉线索,同时也可以促进对人造生物的研究。

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