首页> 外文期刊>Computers and Electronics in Agriculture >Systematic approach for using hyperspectral imaging data to develop multispectral imagining systems: detection of feces on apples.
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Systematic approach for using hyperspectral imaging data to develop multispectral imagining systems: detection of feces on apples.

机译:使用高光谱成像数据开发多光谱成像系统的系统方法:检测苹果上的粪便。

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The large size of data sets generated using hyperspectral imaging techniques significantly increases both the capability and difficulty of designing detection and classification systems. Of particular interest is the confluence with increasing use of multispectral imaging in machine vision, particularly in the area of food safety inspection. The purpose of this study was to develop a robust method for selecting one or two wavelengths for multispectral detection systems using hyperspectral data. The actual performance of detection algorithms in terms of true positives and false positives was used as optimization criteria. Detection of fecal contamination on apples is an important health safety issue. Prior observations suggest reflectance or fluorescence imaging in the visible to near-infrared can be used to detect such contamination. For this study, 1:2, 1:20, and 1:200 dilutions of dairy feces were applied to 100 Golden and 100 Red Delicious apples. Apples were imaged using a hyperspectral system, and a uniform power transformation was used to reduce inter-apple intensity variability. Detection was accomplished by applying a binary threshold to transformed single wavelength images and images construct using ratios or differences of images at two different wavelengths. Optimization criteria allowed for a maximum of three false positives. For reflectance imaging, maximum detection rates for 1:20 dilution spots on Golden and Red Delicious apples images were 100% and 62.5% using R816 - R697 and R784 - R738, respectively. For fluorescence imaging, maximum detection rates for 1:200 dilution spots on Golden and Red Delicious apples were 97.9% and 58.3% using F665/F602 and F647/F482, respectively. In all case, more concentrated dilution spots were detected at 100%. Maximum detection rates for Red Delicious apples required use of a Prewitt edge-detection filter. In comparison, tests of wavelengths and algorithms identified in previous studies using statistical methods such as principal component analysis produced lower detection rates, mainly due to problems with false positives. The procedures used for developing detection algorithms are not specific to detecting feces on apples, and it is theoretically easy to extend the results to detection schemes involving many wavelengths. The problem is the classical dilemma of rapidly increasing computational time. Still, given the costs of thoroughly testing a candidate detection algorithm, the time maybe warranted. Furthermore, as machine vision systems are often limited to one or two wavelengths due to practical considerations including cost, exhaustive search algorithms based-on optimizing the output of candidate detection algorithms should be cost-effective..
机译:使用高光谱成像技术生成的大量数据集显着增加了设计检测和分类系统的能力和难度。特别令人感兴趣的是在机器视觉中,尤其是在食品安全检查领域,越来越多地使用多光谱成像的融合。这项研究的目的是开发一种可靠的方法,用于使用高光谱数据为多光谱检测系统选择一个或两个波长。检测算法在真实阳性和假阳性方面的实际性能被用作优化标准。苹果粪便污染的检测是一个重要的健康安全问题。先前的观察表明,可见光至近红外光的反射率或荧光成像可用于检测此类污染。在本研究中,将乳汁的1:2、1:20和1:200稀释液应用于100个金苹果和100个红色美味苹果。使用高光谱系统对苹果进行成像,并使用统一的幂变换来减少苹果之间的强度变化。通过对转换后的单波长图像应用二进制阈值来完成检测,并使用两个不同波长的图像的比率或差异来构建图像。优化标准最多允许三个假阳性。对于反射成像,使用R816-R697和R784-R738分别对Golden和Red Delicious苹果图像上的1:20稀释点的最大检出率分别为100%和62.5%。对于荧光成像,使用F665 / F602和F647 / F482在Golden和Red Delicious苹果上1:200稀释点的最大检出率分别为97.9%和58.3%。在所有情况下,均以100%检测到更浓缩的稀释斑点。红色美味苹果的最大检出率要求使用Prewitt边缘检测滤光片。相比之下,以前的研究中使用统计方法(例如主成分分析)确定的波长测试和算法测试产生的检测率较低,这主要是由于假阳性问题所致。用于开发检测算法的过程并不特定于检测苹果上的粪便,并且从理论上讲,很容易将结果扩展到涉及许多波长的检测方案。问题是快速增加计算时间的经典难题。尽管如此,考虑到彻底测试候选检测算法的成本,时间还是可以保证的。此外,由于由于包括成本在内的实际考虑,机器视觉系统通常限于一个或两个波长,因此基于优化候选检测算法输出的详尽搜索算法应具有成本效益。

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