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Detection of damaged wheat kernels using an impact acoustic signal processing technique based on Gaussian modelling and an improved extreme learning machine algorithm

机译:基于高斯建模的冲击声信号处理技术检测损坏的小麦内核和改进的极限习题机算法

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摘要

Wheat kernel damage is a major source of food quality degradation, and long-term feeding on products from damaged wheat kernels will result in malnutrition or even induce diseases. Therefore, detection of damaged wheat kernels is of significant interest. An impact acoustic signal processing technique based on Gaussian modelling and an improved extreme learning machine approach was proposed for detection of insect and sprout-damaged wheat kernels. Discriminant features extracted from Gaussian-model-estimated parameters were fed to an extreme learning machine based on a C-matrix embedded optimisation approximation solution. The best results, 92.0% of undamaged, 96.0% of insect-damaged, and 95.0% of sprout-damaged wheat kernels were correctly classified by using the proposed method. Furthermore, the detection system had good processing speed. Therefore, it could be effective to detect damaged wheat kernels in real time. (C) 2019 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:小麦核心损伤是食品质量退化的主要来源,并且对来自损坏的小麦核的产品的长期喂养将导致营养不良或甚至诱导疾病。 因此,检测损坏的小麦内核具有重要兴趣。 基于高斯建模的冲击声信号处理技术及改进的极端学习机方法,用于检测昆虫和萌芽的小麦核。 基于C矩阵嵌入式优化近似解,从高斯模型估计参数提取的判别特征被送入极限学习机。 最佳结果,92.0%的未损坏,96.0%的昆虫损坏和95.0%的豆芽损坏的小麦内核通过使用该方法正确分类。 此外,检测系统具有良好的处理速度。 因此,它可以有效地实时检测损坏的小麦内核。 (c)2019年IAGRE。 elsevier有限公司出版。保留所有权利。

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