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An Innovative Approach of Textile Fabrics Identification from Mobile Images using Computer Vision based on Deep Transfer Learning

机译:基于深度转移学习的计算机视觉从移动图像识别织物的创新方法

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The identification of different textile fabrics is a task commonly learned in practice and, therefore, is considered a very strenuous and costly form of learning, causing annoyance to the individual who performs it. Based on this context, this paper proposes a new method for classifying textile fabrics, based on the development of a computer vision system using Convolutional Neural Network (CNN). CNN works as a feature extractor by incorporating the concept of Transfer Learning. Using Transfer Learning allows a pre-trained CNN model to be reused for a new problem. In order to highlight the high performance of CNN, an analysis is performed with feature extractors established in the literature. Parameters such as Accuracy, F1-Score, and processing time are considered to evaluate the efficiency of the proposed approach. For the classification were used Bayesian Classifier, Multi-layer Perceptron (MLP), k-Nearest Neighbor (kNN), Random Forest (RF), and Support Vector Machine (SVM). The results show that the best combination is the CNN architecture DenseNet201 with SVM (RBF), obtaining an accuracy of 94% and F1-Score of 94.2%.
机译:识别不同的纺织品是实践中通常要学习的任务,因此,被认为是一种非常费力和昂贵的学习形式,这会给执行该过程的个人带来烦恼。在此背景下,基于使用卷积神经网络(CNN)的计算机视觉系统的发展,本文提出了一种新的织物分类方法。 CNN通过结合“转移学习”的概念来充当特征提取器。使用转移学习可以将经过预训练的CNN模型用于新问题。为了突出CNN的高性能,使用文献中建立的特征提取器进行了分析。考虑诸如准确性,F1-分数和处理时间之类的参数,以评估所提出方法的效率。对于分类,使用贝叶斯分类器,多层感知器(MLP),k最近邻(kNN),随机森林(RF)和支持向量机(SVM)。结果表明,最佳组合是具有SVM(RBF)的CNN架构DenseNet201,获得的准确度为94%,F1-Score为94.2%。

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