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首页> 外文期刊>Computers and Electronics in Agriculture >Integrating multispectral reflectance and fluorescence imaging for defect detection on apples.
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Integrating multispectral reflectance and fluorescence imaging for defect detection on apples.

机译:将多光谱反射率和荧光成像相结合,可对苹果进行缺陷检测。

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摘要

This research investigated multispectral imaging to detect various defects on apples. An integrated approach using multispectral imaging in reflectance and fluorescence modes was used to acquire images of three varieties of apples. Eighteen images from a combination of filters ranging from the visible region through the NIR region and from three different imaging modes (reflectance, visible light induced fluorescence, and UV induced fluorescence) were acquired for each apple as a basis for pixel-level classification into normal or disorder tissue. Artificial neural network classification models were developed for two classification schemes, a two-class and a multiple-class. In the two-class scheme, pixels were categorized into normal or disordered tissue, whereas in the multiple-class scheme, pixels were categorized into normal, bitter pit, black rot, decay, soft scald, and superficial scald tissues. A 10-fold cross validation technique was used to assess the performance of the neural network models. The integrated imaging model of reflectance and fluorescence was effective on Honeycrisp variety, whereas single imaging models of reflectance or fluorescence was effective on Redcort and Red Delicious. The technique is promising for accurate recognition of different types of disorder on apple.
机译:这项研究调查了多光谱成像以检测苹果上的各种缺陷。使用在反射率和荧光模式下使用多光谱成像的集成方法来获取三个苹果品种的图像。为每个苹果采集了从可见光区域到NIR区域以及三种不同成像模式(反射率,可见光诱导的荧光和UV诱导的荧光)的滤光片组合得到的18张图像,作为像素级分类为正常图像的基础或疾病组织。针对两种分类方案(两类和多类)开发了人工神经网络分类模型。在两类方案中,像素被分类为正常或无序的组织,而在多类方案中,像素被分类为正常,苦坑,黑腐,腐烂,软皮和浅表皮组织。 10倍交叉验证技术用于评估神经网络模型的性能。反射和荧光的集成成像模型对Honeycrisp品种有效,而反射或荧光的单个成像模型对Redcort和Red Delicious有效。该技术有望准确识别苹果上不同类型的疾病。

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