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首页> 外文期刊>European food research and technology =: Zeitschrift fur Lebensmittel-Untersuchung und -Forschung. A >A hybrid non-invasive method for internal/external quality assessment of potatoes
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A hybrid non-invasive method for internal/external quality assessment of potatoes

机译:一种用于土豆的内部/外部质量评估的混合非侵入方法

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摘要

Consumers purchase fruits and vegetables based on its quality, which can be defined as a degree of excellence which is the result of a combination of characteristics, attributes and properties that have significance for market acceptability. In this paper, a novel hybrid active imaging methodology for potato quality inspection that uses an optical colour camera and an infrared thermal camera is presented. The methodology employs an artificial neural network (ANN) that uses quality data composed by two descriptors as input. The ANN works as a feature classifier so that its output is the potato quality grade. The input vector contains information related to external characteristics, such as shape, weight, length and width. Internal characteristics are also accounted for in the input vector in the form of excessive sugar content. The extra sugar content of the potato is an important problem for potato growers and potato chip manufacturers. Extra sugar content could result in diseases or wounds in the potato tuber. In general, potato tubers with low sugar content are considered as having a higher quality. The validation of the methodology was made through experimentation which consisted in fusing both, external and internal characteristics in the input vector to the ANN for an overall quality classification. Results using internal data as obtained from an infrared camera and fused with optical external parameters demonstrated the feasibility of the method since the prediction accuracy increased during potato grading.
机译:消费者根据其质量购买水果和蔬菜,可以定义为卓越程度,这是具有对市场可接受性具有重要意义具有重要意义的特征,属性和性质的结果。本文介绍了一种新型混合活性成像方法,用于使用光学彩色相机和红外热相机的马铃薯质量检测。该方法采用人工神经网络(ANN),其使用由两个描述符组成的质量数据作为输入。 ANN作为一个特征分类器工作,以便其输出是马铃薯质量等级。输入向量包含与外部特征相关的信息,例如形状,重量,长度和宽度。在过量糖含量的形式的输入载体中也占内部特征。马铃薯的额外糖含量是马铃薯种植者和马铃薯芯片制造商的重要问题。额外的糖含量可能导致马铃薯块茎中的疾病或伤口。通常,具有低糖含量的马铃薯块茎被认为具有更高的质量。通过实验制定了方法论的验证,该实验由输入向量中的输入向量中的融合,外部和内部特征组成,以实现整体质量分类。结果使用从红外摄像机获得的内部数据并与光学外部参数融合的结果证明了该方法的可行性,因为在马铃薯分级期间提高了预测精度。

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