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Detection of bruise damage of pear using hyperspectral imagery

机译:使用高光谱图像检测梨的跌打损伤

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Over the past decade, hyperspectral imaging has been an exciting technology used in many practical fields. In agriculture, hyperspectral imaging is implemented in controlling fruit quality and analyzing specific crops in different estimated climate. Bruise damage is one of the crucial factors that influence significantly quality of fruits. This paper focuses on combining hyperspectral imaging with some supervised classification including k-nearest neighbor (k-NN) and support vector machine (SVM) algorithm to detect bruise areas on pears. Data acquisition of hyperspectral NIR reflectance images of pears was performed for choosing the feature of classification algorithms. Experiment results show the effectiveness of both methods in separating bruise from normal areas in shortest time. These results are good enough to detect the early bruise damage which is not easily recognized by conventional classification methods using human eye.
机译:在过去的十年中,高光谱成像一直是许多实际领域中使用的令人兴奋的技术。在农业中,高光谱成像用于控制水果质量并分析不同估计气候下的特定作物。瘀伤是严重影响水果品质的关键因素之一。本文着重将高光谱成像与一些监督分类相结合,包括k最近邻(k-NN)和支持向量机(SVM)算法来检测梨上的瘀伤区域。为了选择分类算法的特征,对梨进行了高光谱近红外反射率图像的数据采集。实验结果表明,两种方法都能在最短的时间内将瘀伤与正常区域分离。这些结果足以检测早期的瘀伤损伤,而使用人眼的常规分类方法不容易识别这些损伤。

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