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ICA Based Band Selection for Black Walnut Shell and Meat Classification in Hyperspectral Fluorescence Imagery

机译:基于ICA的黑核桃壳和肉类分类的频段选择,在高光谱荧光图像中

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There are approximately over 15.4 million acres of black walnut with each acre producing about 1000 to 1700 pounds of raw nuts in the U. S. However, only about 20 million pounds of the raw black walnuts are commercially processed every year. The reason that growers are not motivated to process the nuts is that there is not enough nut processing capacity available in the U. S. In the current walnut processing plant, small shell fragments are removed manually in order to meet the required marketable quality. This visual sorting work is a very labor intensive and difficult process because shell and meat fragments can be very similar in size and color. In this research, hyperspectral fluorescence imaging has been studied to analyze the difference type of walnut shell and meat. Although the hyperspectral fluorescence imaging has been found to be efficient for differentiating walnut shell from meat, the scanning speed of hyperspectral fluorescence imaging system is not satisfactory especially for the industry requirement of real-time online inspection. Furthermore, the cost of hyperspectral imaging system is still too expensive to be acceptable by the walnut processing plants. As a result, how to select the optimum wavelength for walnut shell and meat classification and keep the same classification performance simultaneously becomes a realistic issue. To solve aforementioned problem, the Independent Component Analysis (ICA) based hyperspectral band selection approach was proposed in this paper. Walnutsamples used in this research included both and two-year old intact black walnuts provided by USDA AMS. Samples were scanned by a hyperspectral fluorescence imaging system. The images were taken at 79 different wavelengths ranging from 425 nm to 775 nm at the 4.5nm increments. The ICA ranking method was first applied to select the most optimal four wavelengths in discrimination of the walnut shell and meat. Then, the k-nearest neighbors (k-NN) classifier was used to do the classification. In order to evaluate the effectiveness of the proposed method, the classification results of ICA based band selection method with k-NN classifier were compared with that of direct k-NN classifier method. The experiment results showed that ICA based band selection withk-NN classifier had better performance than the direct k-NN classifier, and ICA based band selection method were effective in classification of walnut shell and meat.
机译:大约有超过15400000英亩黑核桃与每个英亩大约产在美国1000年至1700年磅然而,仅约20百万磅的原始黑胡桃的每年有商业加工的生坚果的。种植者不上进处理坚果的原因是,没有在美国可用的足够的螺母的处理能力在当前核桃加工厂,小壳碎片手动移除,以满足所需的可销售质量。这种视觉排序工作是一项非常耗费人力和困难的过程,因为壳和肉碎片可以在大小和颜色非常相似。在这项研究中,高光谱荧光成像进行了研究,分析核桃壳和肉的差别类型。尽管高光谱荧光成像已被发现是有效的从肉区分核桃壳,高光谱荧光成像系统的扫描速度不理想特别是对于实时在线检测行业的要求。此外,超光谱成像系统的成本仍然过于昂贵,是由核桃加工厂可以接受的。因此,如何选择核桃壳的最佳波长和肉类分类,并保持相同的分类性能同时成为一个现实问题。为了解决上述问题,独立成分分析(ICA)的高光谱带选择方法在本文中提出的。本研究采用Walnutsamples包括由美国农业部AMS提供既和两岁的完整的黑胡桃。样品通过超光谱荧光成像系统扫描。该图像是在79个不同的波长范围从425nm至在4.5nm的增量775纳米服用。该ICA排名方法首先应用在核桃壳和肉的判别来选择最优化的四个波长。然后,k最近邻居(K-NN)分类器被用来做分类。为了评价所提出的方法的有效性,其中k-NN分类器基于ICA频带选择方法的分类结果与直接K-NN分类方法的比较。实验结果表明,基于ICA波段选择withk-NN分类有较直接的K-NN分类器更好的性能,并根据ICA波段选择方法是有效的核桃壳和肉的分类。

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