Bagus Untung, Saputra, Gunawan, Wresti Andriani
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引用次数: 0

摘要

海岸蜡染是在梭罗和日惹之外制作的。“沿海”一词的使用是由于大部分蜡染生产位于爪哇北部海岸,如Indramayu、Cirebon、Pekalongan、Lasem等。海岸蜡染的特点是灵活的颜色选择和图案,受到外国的影响,特别是在16世纪引入伊斯兰教之后。卷积神经网络(CNN)方法是数字图像数据分类中常用的方法。CNN中的神经元以二维形式表示,线性函数和权重参数不同。CNN提取过程由隐藏层组成,包括卷积层、池化层和激活函数层(ReLU)。卷积神经网络模型的评价结果表明,该模型可以对爪哇岛海岸蜡染图像进行分类和识别,在训练数据比为70%、测试数据比为30%的场景下,达到了最佳效果,准确率达到83%。在未来的研究中,建议增加蜡染图像的数量并直接捕获它们,同时结合分割或提取特征来衡量效率和准确性水平。这将有助于在认识爪哇岛海岸蜡染的特点方面取得更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PENGENALAN MOTIF BATIK PESISIR PULAU JAWA MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK
Coastal Batik is made outside of Solo and Yogyakarta. The use of the term "coastal" is due to the majority of batik production being located in the northern coast of Java, such as Indramayu, Cirebon, Pekalongan, Lasem, and others. Coastal batik is characterized by flexible color selection and patterns, influenced by foreign influences, particularly after the introduction of Islam in the 16th century. The Convolutional Neural Network (CNN) method is commonly used in classifying digital image data. Neurons in CNN are represented in a two-dimensional form, differing in linear function and weight parameters. The CNN extraction process consists of hidden layers, including convolutional, pooling, and ReLU (activation function) layers. The evaluation results of the Convolutional Neural Network model show that it can perform classification and recognize coastal batik images of Java Island, achieving the best results in the first scenario with a training data ratio of 70% and testing data ratio of 30%, resulting in an accuracy of 83%. For future research, it is recommended to increase the number of batik images and capture them directly, while incorporating segmentation or extraction features to measure efficiency and accuracy levels. This will help obtain better results in recognizing the characteristics of coastal batik in Java Island.
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