Classification of Rice varieties using DMLP-PCA inspired features with MVE Classifier

Jerita Chibhabha, Kudakwashe Zvarevashe, Leslie Kudzai Nyandoro, T. Matekenya, B. Mapako
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引用次数: 1

Abstract

The classification of varieties of rice from images is one of the most difficult tasks in computer vision. This complex process is normally applied in automating packaging systems used in production companies. Most companies opt for this option because the alternative way of doing it manually is time consuming, monotonous and prone to expensive errors. To refine the process, there is need to interrogate the features because a classification algorithm is as good as the features used. Therefore, this paper presents Deep Multi-Layer Perceptron generated features. In addition, the paper also introduces the Majority Voting Ensemble (MVE) classifier. The technique was evaluated against CNN (Convolution Neural Network) generated features as well as other traditional classifiers. The proposed solution performed better than the other methods including end-to-end deep learning models.
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基于MVE分类器的DMLP-PCA特征的水稻品种分类
从图像中分类水稻品种是计算机视觉中最困难的任务之一。这个复杂的过程通常应用于生产公司使用的自动化包装系统。大多数公司都选择这个选项,因为手动操作的替代方法既耗时又单调,而且容易出现代价高昂的错误。为了改进这个过程,需要询问特征,因为分类算法和使用的特征一样好。因此,本文提出了Deep Multi-Layer Perceptron生成的特征。此外,本文还介绍了多数投票集成(MVE)分类器。该技术与CNN(卷积神经网络)生成的特征以及其他传统分类器进行了评估。该解决方案的性能优于其他方法,包括端到端深度学习模型。
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