更快R-CNN与CNN在织型识别中的比较

Yoze Rizki, Reny Medikawati Taufiq, Harun Mukhtar, Febby Apri Wenando, Januar Al Amien
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引用次数: 2

摘要

织布是努沙塔拉群岛的一种传统手工艺,是专门用独特的图案制作的一种特殊的布。有必要进行动机识别技术创新,以识别努沙打罗群岛梭织织物中的编织图案。由于努沙塔拉编织的图案和类型非常多样化,因此识别织物中的图案非常困难。本研究将使用Faster R-CNN设计织物图案分类,并将其与卷积神经网络方法进行比较。本研究旨在通过测量Faster R-CNN和CNN对马来语编织图案识别的正确率、精密度和查全率,比较Faster R-CNN和CNN在编织图案分类方面的表现。在对CNN和Faster R-CNN进行数据集收集、系统需求分析、预处理和训练流程设计后,发现从马来织布和gringsing织布图像形式的训练数据中,通过k = 5的k - fold交叉验证,使用Faster R-CNN进行分类,准确率为82.14%,精密度为91.38%,召回率为91.36%。同时,CNN方法的准确率为76%,精密度为74.1%,召回率为72.3。R-CNN在所有参数测试中均优于CNN,正确率提高6.14%,精密度提高17.28%,查全率提高19.06%。研究发现,特征提取器体系结构的选择影响检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison Between Faster R-CNN and CNN in Recognizing Weaving Patterns
Weaving is a particular type of cloth made specifically with distinctive motifs which is a traditional handicraft of Nusantara archipelago. It is necessary to have a motive recognition technology innovation that can identify weaving motifs in the Nusantara archipelago woven fabrics. Recognition of pattern in the woven fabric is very difficult because the patterns and types of Nusantara weaving are very diverse. This research will design the classification of woven fabric patterns using Faster R-CNN and compare it with The Convolutional Neural Network method. This research aims to compare the performance of Faster R-CNN and CNN in classifying weaving patterns by measuring the accuracy, precision, and recall levels of the recognition of Malay woven motifs with both Faster R-CNN and CNN. After collecting datasets, analyzing system requirements, designing preprocessing, and training processes for both CNN and Faster R-CNN, it is found that from the training data in the form of images of the Malay woven fabric and the gringsing woven cloth, it is found that through the K-Fold Cross Validation with a value of k = 5, the classification using Faster R-CNN obtained 82.14% accuracy, 91.38% precision and 91.36% recall. Meanwhile, the CNN method obtained 76% accuracy, 74.1% precision, and 72.3 recall. The faster R-CNN was superior in all parameter tests compared to CNN with a difference of 6.14% for accuracy, 17.28% more precision, and 19.06% for recall value. It found that the choice of Feature extractor architecture impact detection accuracy.
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