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Hyperspectral image analysis based on BoSW model for rice panicle blast grading

机译:基于BoSW模型的水稻穗爆分级高光谱图像分析

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Rice panicle blast grading is very important in gauging cultivar resistance and in the precise control of a blast epidemic. However, the development of an automated, rapid, and accurate panicle blast grading system is a challenging task. This is mainly because of the complexity of the pathology, appearance, and definition of the blast disease level. In this study, a new method for grading panicle blast based on hyperspectral imaging technology is proposed. The method is based on the concept of the "bag of textons," which is widely used in the document analysis field and which defines a "bag of spectra words" (BoSW) model for hyperspectral image data representation. Hyperspectral image data representation based on the BoSW model is used as the input to a chi-square kernel support vector machine (chi-SVM) classifier for predicting the rice panicle blast level. Specifically, the BoSW model jointly considers the image-spectrum information to attain improved classification accuracy. It reduces a high-dimension hyperspectral image into a compact, low-dimension representation. It also highlights the histogram statistics of a typical spectrum prototype to reflect the panicle blast severity level. In this way, it avoids the fine segmentation and morphological analysis of blast lesions. Experiments were conducted on a total of 312 fresh rice panicles covering more than 50 cultivars, which were collected from an experimental field under natural conditions. The results showed that the proposed method could effectively grade panicle blast with classification accuracies of up to 81.41% for six-class grading and 96.40% for two-class grading in the validation datasets. Comparison experiments were conducted on different data batches or combinations thereof. The results showed that the technique is viable for different types of rice cultivar and planting seasons, pointing to its widespread practical applicability. (C) 2015 Elsevier B.V. All rights reserved.
机译:水稻穗瘟定级在衡量品种抗性和精确控制稻瘟病方面非常重要。然而,开发自动化,快速和准确的穗粒分级系统是一项艰巨的任务。这主要是由于病理,外观和原始疾病水平定义的复杂性。提出了一种基于高光谱成像技术的穗爆分级方法。该方法基于“文本袋”的概念,该概念在文档分析领域得到了广泛使用,并定义了“光谱词袋”(BoSW)模型用于高光谱图像数据表示。基于BoSW模型的高光谱图像数据表示被用作卡方支持向量机(chi-SVM)分类器的输入,以预测稻穗爆炸水平。具体而言,BoSW模型共同考虑了图像光谱信息,以提高分类精度。它将高维高光谱图像缩小为紧凑的低维表示形式。它还强调了典型光谱原型的直方图统计信息,以反映穗爆炸的严重程度。这样,它避免了爆炸病灶的精细分割和形态分析。对自然条件下从实验田收集的总共312种新鲜稻穗进行了试验,覆盖了50多个品种。结果表明,所提出的方法可以有效地对穗爆破进行分级,在验证数据集中,六类分级的准确率高达81.41%,二类分级的准确率高达96.40%。对不同数据批次或其组合进行了比较实验。结果表明,该技术适用于不同类型的水稻品种和种植季节,表明了其广泛的实用性。 (C)2015 Elsevier B.V.保留所有权利。

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