In this work, a simple vision algorithm is designed and implemented to extract and identify the surface defects on the Golden Delicious apples caused by the enzymic browning process. 34 Golden Delicious apples were selected for the experiments, of which 17 had enzymic browning defects and the other 17 were sound. The image processing part of the proposed vision algorithm extracted the defective surface area of the apples with high accuracy of 97.15%. The area and mean of the segmented images were selected as the 2x1 feature vectors to feed into a designed artificial neural network. The analysis based on the above features indicated that the images with a mean less than 0.0065 did not belong to the defective apples; rather, they were extracted as part of the calyx and stem of the healthy apples. The classification accuracy of the neural network applied in this study was 99.19%
翻译:在这项工作中,设计和实施了一个简单的视觉算法,以提取和识别因酶褐化过程而导致的金色美味苹果表面缺陷。 34 为实验挑选了34个金色苹果,其中17个有酶褐色缺陷,其他17个是健全的。拟议视觉算法的图像处理部分以97.15%的高精度提取了苹果有缺陷的表面面积。分层图像的面积和平均值被选为2x1特性矢量,供输入设计的人造神经网络。基于上述特征的分析表明,平均值低于0.0065的图像不属于有缺陷的苹果;相反,它们是作为健康苹果的木质和干料的一部分提取的。本研究中应用的神经网络的分类准确度为99.19%。