基于神经网络的智慧农业火龙果成熟期识别

Abhishek G, A. Prabhu, N. Rani
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摘要

火龙果是一种受欢迎的水果,具有独特的外观和味道。它是一种重要的水果在出口和国内市场。然而,由于其物理性质的复杂性,其成熟度检测仍然是一项具有挑战性的任务。本研究提出了一种利用VGG16模型和支持向量机对火龙果成熟度进行检测的新方法。为了增加数据集,应用了数据增强技术,然后进行预处理、阈值分割、边缘检测和轮廓检测,提取ROI。然后将分割后的图像发送到VGG-16模型,该模型对未成熟、部分成熟和成熟阶段的准确率分别为95.93%、95.31%和96.54%。对果实区域提取的特征有均值、标准差、熵、对比度、相关性、差矩逆。结果表明,未成熟、部分成熟和成熟期−16的SVM分类器准确率分别为91.93%、91.93%和92.54%,优于SVM分类器。
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Identification of Stages of Ripening of Dragon Fruit Using Neural Networks for Smart Agriculture
Dragon fruit is a popular fruit with a unique appearance and taste. It is an important fruit in export and domestic markets. However, its maturity detection is still a challenging task due to the complexity of its physical properties. This research study introduces a new approach by utilizing the VGG16 model and SVM to detect the maturity of dragon fruit. For the purpose of increasing the datasets, the data augmentation techniques were applied that was followed by preprocessing, thresholding, edge detection and contour detection, and extracting the ROI. The segmented images were then sent to the VGG-16 model that provided accuracy of 95.93%, 95.31% and 96.54 % for unripe, partially ripe and ripe stages. The features extracted for the fruit region are mean, standard deviation, entropy, contrast, correlation, Inverse difference moments. These are fed to the SVM classifier that generated accuracy of 91.93%, 91.93 % and 92.54% accuracy for unripe, partially ripe and ripe stage −16 performed better than SVM classifier.
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