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Automated Method to Determine Two Critical Growth Stages of Wheat: Heading and Flowering

机译:确定小麦两个关键生长阶段的自动方法:抽穗期和开花期

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摘要

Recording growth stage information is an important aspect of precision agriculture, crop breeding and phenotyping. In practice, crop growth stage is still primarily monitored by-eye, which is not only laborious and time-consuming, but also subjective and error-prone. The application of computer vision on digital images offers a high-throughput and non-invasive alternative to manual observations and its use in agriculture and high-throughput phenotyping is increasing. This paper presents an automated method to detect wheat heading and flowering stages, which uses the application of computer vision on digital images. The bag-of-visual-word technique is used to identify the growth stage during heading and flowering within digital images. Scale invariant feature transformation feature extraction technique is used for lower level feature extraction; subsequently, local linear constraint coding and spatial pyramid matching are developed in the mid-level representation stage. At the end, support vector machine classification is used to train and test the data samples. The method outperformed existing algorithms, having yielded 95.24, 97.79, 99.59% at early, medium and late stages of heading, respectively and 85.45% accuracy for flowering detection. The results also illustrate that the proposed method is robust enough to handle complex environmental changes (illumination, occlusion). Although the proposed method is applied only on identifying growth stage in wheat, there is potential for application to other crops and categorization concepts, such as disease classification.
机译:记录生长阶段信息是精准农业,作物育种和表型鉴定的重要方面。在实践中,作物的生长阶段仍主要通过肉眼监控,这不仅费时费力,而且主观且容易出错。计算机视觉在数字图像上的应用提供了手动观察的高通量和非侵入性替代方法,并且其在农业和高通量表型中的应用正在增加。本文提出了一种自动方法,该方法使用计算机视觉在数字图像上的应用来检测小麦抽穗期和开花期。视觉词袋技术用于识别数字图像在抽穗和开花期间的生长阶段。尺度不变特征变换特征提取技术用于低级特征提取。随后,在中层表示阶段开发了局部线性约束编码和空间金字塔匹配。最后,使用支持向量机分类来训练和测试数据样本。该方法的性能优于现有算法,在抽穗的初期,中期和后期分别达到95.24%,97.79%,99.59%,开花检测的准确度为85.45%。结果还表明,该方法具有足够的鲁棒性,可以应对复杂的环境变化(照明,遮挡)。尽管所提出的方法仅用于确定小麦的生长期,但仍有可能应用于其他作物和分类概念,例如疾病分类。

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