Palembang songket fabric motif image detection with data augmentation based on ResNet using dropout

Ermatita Ermatita, Handrie Noprisson, Abdiansah Abdiansah
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Abstract

A good way to spread knowledge about Palembang songket woven cloth patterns is to use information technology, especially artificial intelligence technology. This study's main goal is to develop a ResNet model with dropout regularization methods and find out how dropout regularization affects the ResNet model for detecting Palembang songket fabric motif with more data. Data was collected in places like tujuh saudara songket, Zainal songket, songket PaSH, AMS songket, and batik, Ernawati songket, Nabilah collections, Ilham songket, and Marissa songket. We used eight class of data for this research. A dataset of 7,680 data for training, 960 data for validation, and 960 data for testing is a dataset that has been prepared to be implemented in experiments. In the final results, the experimental results for DResNet demonstrated that accuracy at the training stage was 92.16%, accuracy at the validation stage was 78.60%, and accuracy at the submission stage was 80.3%. The experimental results also show that dropouts are able to increase the accuracy of the ResNet model by adding +1.10% accuracy in the training process, adding +1.80% accuracy in the validation process, and adding +0.40% accuracy in the testing process.
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基于 ResNet 的 Palembang songket 织物图案图像检测与使用 dropout 的数据增强技术
利用信息技术,特别是人工智能技术,是传播有关巴伦邦歌德织布图案知识的好方法。本研究的主要目标是开发一个采用滤除正则化方法的 ResNet 模型,并利用更多数据找出滤除正则化对 ResNet 模型检测巴伦邦歌德布图案的影响。数据收集地点包括 tujuh saudara songket、Zainal songket、songket PaSH、AMS songket 和 batik、Ernawati songket、Nabilah collection、Ilham songket 和 Marissa songket。我们在这项研究中使用了八类数据。其中,7680 个数据用于训练,960 个数据用于验证,960 个数据用于测试。DResNet 的最终实验结果表明,训练阶段的准确率为 92.16%,验证阶段的准确率为 78.60%,提交阶段的准确率为 80.3%。实验结果还表明,Dropouts 能够提高 ResNet 模型的准确度,在训练过程中提高+1.10%的准确度,在验证过程中提高+1.80%的准确度,在测试过程中提高+0.40%的准确度。
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