一个虚拟农艺图像建模验证

Gawain Jones, C. Gée, S. Villette, F. Truchetet
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引用次数: 0

摘要

在精准农业中,成像系统等远程传感器通常用于管理特定地点的杂草。虽然有几种利用空间信息的算法,但很少有在相关数据库上进行的测试证明了它们的有效性。在本文中,我们提出了一种创新的方法,基于一个简单的模型来模拟虚拟作物,以评估任何作物/杂草识别算法的鲁棒性和效率。提出了一个二维统计和空间作物田模型:它允许为不同品种(小麦、向日葵、玉米等)设计具有给定特征(植株大小、行间宽度等)的虚拟作物。杂草侵扰率是根据需要在三种不同的空间分布(点、集合或混合)上设置的,提供了模拟田地的多样性。通过对真实/虚拟图片,采用两种不同尺度的空间描述符(最近邻法和Besag函数)对模型的空间真实感进行验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Validation of a virtual agronomic image modelling
In Precision Agriculture, remote sensors such as imaging systems are commonly used to manage site-specific weeds. Although there are several algorithms using spatial information, few tests proving their efficiency have been performed on relevant database. In this paper we propose an innovative approach based on a simple model that simulates virtual crops to evaluate the robustness and efficiency of any crop/weed discrimination algorithm. A two-dimensional statistical and spatial crop field model is presented: it allows the design of virtual crops with given characteristics (plant size, inter-row width…) for various species (wheat, sunflower, maize…). The Weed Infestation Rate is set on demand at three different spatial distributions (point, aggregate, or a mixture) providing the diversity of the resulting simulated field. The spatial realism of the model is validated by two spatial descriptors (nearest neighbor method and Besag's function) at different scales through a pair of real/virtual pictures.
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