首页> 外文期刊>Transactions of the ASAE >ESTIMATION OF WEIGHT PERCENTAGE OF SCABBY WHEAT KERNELS USING AN AUTOMATIC MACHINE VISION AND NEURAL NETWORK BASED SYSTEM
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ESTIMATION OF WEIGHT PERCENTAGE OF SCABBY WHEAT KERNELS USING AN AUTOMATIC MACHINE VISION AND NEURAL NETWORK BASED SYSTEM

机译:基于自动机器视觉和基于神经网络的系统估计SC的重量百分比

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摘要

In examining the quality of wheat for pricing purposes, or the scab-resistance of wheat as required for breeding research, it is important to rapidly determine the weight percentage of scabby kernels (WPSK). This study involved development of an automatic system to perform such tasks. This system is based on the color features of scabby kernels captured by a machine vision system. The color features were processed to produce numerical values that were correlated to WPSK using a neural network. Schemes were developed to synchronize an automatic sample feeder with image capturing, followed by automatic image processing and neural network computing. Wheat kernels were distributed in a single layer for image capturing, which minimized the random errors caused by overlapping of kernels and eliminated the need to acquire multiple images to represent a single sample when kernels are distributed in multiple overlapping layers. Statistical analysis indicates that the correlation coefficient between estimated WPSK and actual WPSK was 0.96, with a mean absolute error of 1.32% and maximum absolute error of 5.22%. The system could be stabilized through an online color-compensation procedure that dealt with illumination variations
机译:在出于定价目的检查小麦质量或进行育种研究所需的小麦抗结ab性时,重要的是迅速确定鳞的重量百分比(WPSK)。这项研究涉及开发执行此类任务的自动系统。该系统基于机器视觉系统捕获的斑点状内核的颜色特征。使用神经网络处理颜色特征以产生与WPSK相关的数值。开发了使自动进样器与图像捕获同步,然后进行自动图像处理和神经网络计算的方案。小麦籽粒被分布在单层中以进行图像捕获,从而最大程度地减少了由籽粒重叠引起的随机误差,并且消除了当籽粒分布在多个重叠层中时需要获取多个图像来表示单个样本的需求。统计分析表明,估计的WPSK与实际的WPSK之间的相关系数为0.96,平均绝对误差为1.32%,最大绝对误差为5.22%。该系统可以通过处理照明变化的在线色彩补偿程序来稳定

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