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Automatic Vision Based Classification System Using DNN and SVM Classifiers

机译:使用DNN和SVM分类器的基于视觉的自动分类系统

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In this paper, we construct an automatic classification vision system that is designed to recognize Malaysian herbs that are typically used for medical or culinary purposes. The proposed system employs two classifiers, Support Vector machine (SVM) and Deep Neural Network (DNN). The two classifiers have been implemented using OpenCV-Python. For the training test SVM achieved 86.63% recognition accuracy and DNN (TensorFlow) achieved 98% recognition accuracy. For the real life testing SVM achieved 74.63% recognition accuracy and DNN achieved 93% recognition accuracy. In the proposed system a total of 1000 leaves were used. A total of 50 samples of herbs were collected for each class and they were divided into two datasets. The first dataset which consisted 60% of the herbs samples were used for the training purpose and the other dataset with 40% of the herbs samples were used for the testing purpose. The time taken for each recognition process was 4 seconds for SVM and 5 seconds for DNN classifier. Also, the proposed system is capable of identifying the herbs leaves even though they are wet, dried and deformed with a recognition accuracy of 52.50%. Finally, based on the experiments that were done, the system proved to be very efficient and accurate with the highest recognition rate being 98%. The results indicate that the techniques used in the proposed system are significantly efficient when compared to the various techniques employed in the existing literature.
机译:在本文中,我们构建了一个自动分类视觉系统,该系统旨在识别通常用于医疗或烹饪目的的马来西亚草药。拟议的系统采用了两个分类器,支持向量机(SVM)和深度神经网络(DNN)。这两个分类器已使用OpenCV-Python实现。对于训练测试,SVM达到86.63%的识别精度,而DNN(TensorFlow)达到98%的识别精度。在实际测试中,SVM达到74.63%的识别精度,而DNN达到93%的识别精度。在建议的系统中,总共使用了1000个叶子。每个类别总共收集了50种草药样品,并将它们分为两个数据集。第一个数据集包含60%的草药样品,用于培训,而另一个数据集包含40%的草药样品,用于测试。对于SVM,每个识别过程花费的时间为4秒,对于DNN分类器,则为5秒。同样,所提出的系统即使在潮湿,干燥和变形的情况下也能够识别出草药叶,其识别精度为52.50%。最后,基于所做的实验,该系统被证明是非常有效和准确的,最高识别率为98%。结果表明,与现有文献中采用的各种技术相比,所提出的系统中使用的技术非常有效。

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