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A Hybrid Machine Learning Approach to Automatic Plant Phenotyping for Smart Agriculture

机译:一种混合机器学习方法,以自动植物表型对智能农业

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Recently, a new ICT approach to agriculture called "Smart Agriculture" has been received great attention to support farmers' decision-making for good final yield on various kinds of field conditions. For this purpose, this paper presents two image sensing methods that enable an automatic observation to capture flowers and seedpods of soybeans in real fields. The developed image sensing methods are considered as sensors in an agricultural cyber-physical system in which big data on the growth status of agricultural plants and environmental information (e.g., weather, temperature, humidity, solar radiation, soil condition, etc.) are analyzed to mine useful rules for appropriate cultivation. The proposed image sensing methods are constructed by combining several image processing and machine learning techniques. The flower detection is realized based on a coarse-to-fine approach where candidate areas of flowers are first detected by SLIC and hue information, and the acceptance of flowers is decided by CNN. In the seedpod detection, candidates of seedpod regions are first detected by the Viola-Jones object detection method, and we also use CNN to make a final decision on the acceptance of detected seedpods. The performance of the proposed image sensing methods is evaluated for a data set of soybean images that were taken from a crowd of soybeans in real agricultural fields in Hokkaido, Japan.
机译:最近,呼吁“智能农业”的新ICT方法得到了极大的关注,以支持农民的决策,以便在各种现场条件下获得良好的最终产量。为此目的,本文呈现了两种图像传感方法,使自动观察能够在真实田地中捕获大豆的鲜花和幼苗。发育的图像传感方法被认为是农业网络物理系统中的传感器,其中分析了农业植物和环境信息的生长状态的大数据(例如,天气,温度,湿度,太阳辐射,土壤条件等)挖掘有用的培养规则。通过组合多种图像处理和机器学习技术来构造所提出的图像感测方法。基于粗待精细的方法来实现花检测,其中首先通过斜角和色调信息检测花的候选区域,并且通过CNN决定花的接受。在种子检测中,首先通过中提琴对象检测方法检测种子区的候选,我们还使用CNN对检测到的种子的接受作出最终决定。所提出的图像感测方法的性能被评估为日本北海道真实农业领域的大豆人群中取出的大豆图像的数据集。

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