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Novel Search Algorithms for a Mid-Infrared Spectral Library of Cotton Contaminants

机译:棉花污染物中红外光谱库的新型搜索算法

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During harvest, a variety of plant based contaminants are collected along with cotton lint. The USDA previously created a mid-infrared, attenuated total reflection (ATR), Fourier transform infrared (FT-IR) spectral library of cotton contaminants for contaminant identification as the contaminants have negative impacts on yarn quality. This library has shown impressive identification rates for extremely similar cellulose based contaminants in cases where the library was representative of the samples searched. When spectra of contaminant samples from crops grown in different geographic locations, seasons, and conditions and measured with a different spectrometer and accessories were searched, identification rates for standard search algorithms decreased significantly. Six standard algorithms were examined: dot product, correlation, sum of absolute values of differences, sum of the square root of the absolute values of differences, sum of absolute values of differences of derivatives, and sum of squared differences of derivatives. Four categories of contaminants derived from cotton plants were considered: leaf, stem, seed coat, and hull. Experiments revealed that the performance of the standard search algorithms depended upon the category of sample being searched and that different algorithms provided complementary information about sample identity. These results indicated that choosing a single standard algorithm to search the library was not possible. Three voting scheme algorithms based on result frequency, result rank, category frequency, or a combination of these factors for the results returned by the standard algorithms were developed and tested for their capability to overcome the unpredictability of the standard algorithms' performances. The group voting scheme search was based on the number of spectra from each category of samples represented in the library returned in the top ten results of the standard algorithms. This group algorithm was able to identify correctly as many test spectra as the best standard algorithm without relying on human choice to select a standard algorithm to perform the searches.
机译:在收获期间,会收集各种植物性污染物以及棉绒。 USDA先前创建了棉污染物的中红外,衰减全反射(ATR),傅里叶变换红外(FT-IR)光谱库,用于污染物识别,因为污染物会对纱线质量产生负面影响。在该库代表所搜索样品的情况下,该库对极为相似的基于纤维素的污染物显示出令人印象深刻的识别率。当搜索来自在不同地理位置,季节和条件下生长并使用不同光谱仪和附件测量的农作物的污染物样品的光谱时,标准搜索算法的识别率显着下降。检查了六个标准算法:点积,相关性,差的绝对值之和,差的绝对值的平方根之和,导数的差的绝对值之和和导数的差的平方和。考虑了来自棉花植物的四类污染物:叶,茎,种皮和壳。实验表明,标准搜索算法的性能取决于所搜索样品的类别,并且不同的算法提供了有关样品身份的补充信息。这些结果表明,不可能选择单个标准算法来搜索库。针对标准算法返回的结果,开发了三种基于结果频率,结果等级,类别频率或这些因素的组合的表决方案算法,并测试了其克服标准算法性能不可预测性的能力。分组表决方案搜索基于标准算法的前十个结果中返回的库中表示的每个样本类别的光谱数量。该组算法能够正确识别与最佳标准算法一样多的测试光谱,而无需依靠人工选择来选择标准算法来执行搜索。

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    《Applied Spectroscopy》 |2008年第6期|661-670|共10页
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