基于嵌入式视觉系统的玉米生长监测

Li Qiaoyu, Liu Shuyun, Mu Yuanjie, Shang Ming-hua
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引用次数: 0

摘要

快速、准确地监测玉米的生长状况,对研究和管理具有重要意义。然而,传统的基于机器视觉的植物生长监测方法需要理想的环境进行图像测量,缺乏对复杂环境应用的探索。本文提出了玉米生长环境中的嵌入式设备,通过人工提取嵌入式视觉系统中的植物生长特征,然后通过自定义算法进行监控。基于嵌入式设备的植物生长监测系统集成了包含滤波、色彩空间变换、图像分割、形态运算和特征量化五部分的标准流程。过程中的每一步都包含多种算法,用户可以自由组合算法来获得植物在不同环境下的分析值。对拔节期玉米植株进行连续监测,结果表明,系统分析值与人工测量值的确定系数达到0.907,表明该系统可用于复杂环境下的玉米生长监测。
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Maize Growth Monitoring Based on Embedded Vision System
Monitoring the growth of maize rapidly and accurately is meaningful in research and management. However, traditional plant growth monitoring methods based on machine vision required ideal environment for image measurement, lack of exploration for the application of complex environment. This paper proposed embedded devices in Maize growth environment, extracting features of plant growth in the embedded vision system by the artificial, then monitoring by the user-defined algorithm. Plant growth monitoring system based on embedded device integrates a standard process flow contained five part such as filter, color space transformation, image segmentation, morphological operations and feature quantization. Each step in the process includes a variety of algorithms, users can combine algorithms freestyle to get analysis values of plant on different environment. Continuously monitor the maize plants at jointing stage, the results showed that the determination coefficient of system analysis value and manual measurement value reaches 0.907, which indicated that the system can be used for monitoring maize growth under complex environment.
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