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In-field high throughput grapevine phenotyping with a consumer-grade depth camera

机译:使用消费级深度相机现场高通量葡萄表表型

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摘要

Plant phenotyping, that is, the quantitative assessment of plant traits including growth, morphology, physiology, and yield, is a critical aspect towards efficient and effective crop management. Currently, plant phenotyping is a manually intensive and time consuming process, which involves human operators making measurements in the field, based on visual estimates or using hand-held devices. In this work, methods for automated grapevine phenotyping are developed, aiming to canopy volume estimation and bunch detection and counting. It is demonstrated that both measurements can be effectively performed in the field using a consumer-grade depth camera mounted on-board an agricultural vehicle. First, a dense 3D map of the grapevine row, augmented with its color appearance, is generated, based on infrared stereo reconstruction. Then, different computational geometry methods are applied and evaluated for plant per plant volume estimation. The proposed methods are validated through field tests performed in a commercial vineyard in Switzerland. It is shown that different automatic methods lead to different canopy volume estimates meaning that new standard methods and procedures need to be defined and established. Four deep learning frameworks, namely the AlexNet, the VGG16, the VGG19 and the GoogLeNet, are also implemented and compared to segment visual images acquired by the RGBD sensor into multiple classes and recognize grape bunches. Field tests are presented showing that, despite the poor quality of the input images, the proposed methods are able to correctly detect fruits, with a maximum accuracy of 91.52%, obtained by the VGG19 deep neural network.
机译:植物表型,即植物性状的定量评估,包括生长,形态,生理学和产量,是有效且有效的作物管理的关键方面。目前,植物表型是一种手动密集且耗时的过程,它涉及人类运营商,基于视觉估计或使用手持设备来进行现场测量。在这项工作中,开发了自动葡萄表型表型的方法,旨在瞄准结构块体积估计和束检测和计数。结果证明,可以使用安装在车载农机的消费级深度相机在现场中有效地进行测量。首先,基于红外立体声重建,产生葡萄行的密集3D地图,增强其颜色外观。然后,对每个植物体积估计进行施加和评估不同的计算几何方法。通过在瑞士商业葡萄园进行的现场测试验证了所提出的方法。结果表明,不同的自动方法导致不同的冠复体估计,这意味着需要定义和建立新的标准方法和程序。还可以实现四个深度学习框架,即亚历克网,VGG16,VGG19和Googlenet,与RGBD传感器获取的分段视觉图像分成多个类并识别葡萄串。提出了现场测试表明,尽管输入图像质量差,所提出的方法能够正确地检测水果,最大精度为91.52%,由VGG19深神经网络获得。

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