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Spectral and Image Integrated Analysis of Hyperspectral Data for Waxy Corn Seed Variety Classification

机译:糯玉米种子品种分类的高光谱数据的光谱和图像综合分析

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摘要

The purity of waxy corn seed is a very important index of seed quality. A novel procedure for the classification of corn seed varieties was developed based on the combined spectral, morphological, and texture features extracted from visible and near-infrared (VIS/NIR) hyperspectral images. For the purpose of exploration and comparison, images of both sides of corn kernels (150 kernels of each variety) were captured and analyzed. The raw spectra were preprocessed with Savitzky-Golay (SG) smoothing and derivation. To reduce the dimension of spectral data, the spectral feature vectors were constructed using the successive projections algorithm (SPA). Five morphological features (area, circularity, aspect ratio, roundness, and solidity) and eight texture features (energy, contrast, correlation, entropy, and their standard deviations) were extracted as appearance character from every corn kernel. Support vector machines (SVM) and a partial least squares–discriminant analysis (PLS-DA) model were employed to build the classification models for seed varieties classification based on different groups of features. The results demonstrate that combining spectral and appearance characteristic could obtain better classification results. The recognition accuracy achieved in the SVM model (98.2% and 96.3% for germ side and endosperm side, respectively) was more satisfactory than in the PLS-DA model. This procedure has the potential for use as a new method for seed purity testing.
机译:糯玉米种子的纯度是种子质量的非常重要的指标。基于从可见和近红外(VIS / NIR)高光谱图像中提取的光谱,形态和质地特征的组合,开发了一种用于玉米种子品种分类的新方法。为了探索和比较的目的,捕获并分析了玉米粒两面(每个品种150粒)的图像。原始光谱用Savitzky-Golay(SG)平滑和推导进行了预处理。为了减少光谱数据的维数,使用连续投影算法(SPA)构建了光谱特征向量。从每个玉米籽粒中提取出五个形态特征(面积,圆度,纵横比,圆度和实心度)和八个纹理特征(能量,对比度,相关性,熵及其标准偏差)作为外观特征。支持向量机(SVM)和偏最小二乘判别分析(PLS-DA)模型被用来建立基于不同特征组的种子品种分类的分类模型。结果表明,结合光谱和外观特征可以获得更好的分类结果。与PLS-DA模型相比,在SVM模型中实现的识别准确率(细菌侧和胚乳侧分别为98.2%和96.3%)更令人满意。此程序有可能用作种子纯度测试的新方法。

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