The biggest challenge faced by a Machine Learning Engineer is the lack of data they have, especially for 2-dimensional images. The image is processed to be trained into a Machine Learning model so that it can recognize patterns in the data and provide predictions. This research is intended to create a solution using the Cycle Generative Adversarial Networks (GANs) algorithm in overcoming the problem of lack of data. Then use Style Transfer to be able to generate a new image based on the given style. Based on the results of testing the resulting model has been carried out several improvements, previously the loss value of the photo generator: 3.1267, monet style generator: 3.2026, photo discriminator: 0.6325, and monet style discriminator: 0.6931 to photo generator: 2.3792, monet style generator: 2.7291, photo discriminator: 0.5956, and monet style discriminator: 0.4940. It is hoped that the research will make the application of this solution useful in the fields of Education, Arts, Information Technology, Medicine, Astronomy, Automotive and other important fields.
翻译:机器学习工程师面临的最大挑战是缺乏他们掌握的数据,特别是二维图像的数据。图像经过处理后被培训成机器学习模型,以便识别数据模式并提供预测。研究的目的是利用循环生成反逆网络(GANs)算法找到解决办法,解决数据缺乏问题。然后使用样式传输,以便能够根据给定风格生成新的图像。根据测试结果,已经进行了一些改进,此前,摄影生成器的损失值:3.1267, 货币风格生成器:3.2026, 照片鉴别器:0.6325, 货币风格分析器:0.6931, 照片生成器:2.3792, 货币风格生成器:2.7291, 照片鉴别器:0.5956, 货币风格分析器:0.4940。希望研究将使这一解决方案在教育、艺术、信息技术、医学、阿斯托诺米、汽车和其他重要领域得到应用。