手工织物图案识别方法:系统的文献综述

Handrie Noprisson, Ermatita Ermatita, Abdiansah Abdiansah, Vina Ayumi, Mariana Purba, Marissa Utami
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引用次数: 8

摘要

手工编织图案识别的知识只有老一辈人拥有,并没有传给年轻一代。此外,计算机技术可以支持传统机织图案的识别。本研究的目的是对手工织物图案识别的文献进行综述,重点是性能准确性,技术和使用的数据集。本研究包括系统文献回顾(SLR)的三个不同阶段:计划、执行和报告研究结果。我们发现几个数据集在924,845个数据之间,类的数量在3-25个类之间。基于研究结果,我们获得了几种以性能检测为核心的手织图案识别方法。我们推荐了图像预处理方法,包括自适应滤波去噪、自适应维纳滤波、直方图均衡化、梯度金字塔分解。此外,我们还提出了Radon变换、小波变换、局部旋转不变性测度(LBP-ROR)、变换不变低秩纹理(TILT)和方向梯度直方图(HOG)五种特征提取方法。对于学习方法,我们推荐使用模糊c均值(FCM)、卷积神经网络(CNN)、深度神经网络(DNN)、MobileNets、Inception-v3和ResNet-50。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hand-Woven Fabric Motif Recognition Methods: A Systematic Literature Review
Knowledge of hand-woven motif recognition is only owned by the older generation, which has not been passed down to the younger generation. Moreover, computer technology can be used to support the recognition of traditional woven fabric motifs. The aim of this research is to conduct a literature review on hand-woven fabric motif recognition, with an emphasis on performance accuracy, techniques, and datasets utilized. This research included three distinct stages of systematic literature review (SLR): planning, execution, and reporting of findings. We found several datasets between 924,845 data and the number of classes between 3–25 class. Based on research result, we obtained several methods for hand-woven fabric motif recognition focused on performance examination. We recommended image pre-processing method, including Adaptive Filtering Denoising, Adaptive Wiener Filtering, Histogram Equalization, Gradient Pyramid (GP) Decomposition. Moreover, we suggested five feature extraction methods, including Radon Transform, Wavelet Transform, Locally Rotation Invariance Measure (LBP-ROR), Transform Invariant Low-Rank Textures (TILT) and Histogram of Oriented Gradients (HOG). For learning method, we recommend Fuzzy C-Mean (FCM), Convolutional neural network (CNN), Deep Neural Network (DNN), MobileNets, Inception-v3 and ResNet-50.
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