基于集成回归树的唇色模拟超参数优化

Andi Hakim Arif, Achmad Solichin
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引用次数: 2

摘要

技术在许多活动中帮助我们,并不断发展,因此它使活动更有效,节省时间,使用更少的资源,信息和娱乐也更容易获得。机器学习技术是计算机科学中发展最快的领域,应用于市场营销、医疗保健、制造业、信息安全和交通运输等许多领域。其中一种机器学习方法是回归树集合(ERT),它成功地检测了眉毛、眼睛、鼻子和嘴唇上的面部特征。然而,利用ERT方法还没有发现检测特定区域,如嘴唇,只是为了获得优化。然后,本研究将从iBUG 300W数据集中提取68个人脸特征到20个唇区点的人脸特征标注数据集。采用超参数值配置,tree = 4,正则化= 0.25,级联= 8,feature pool = 500,过采样= 40,平移抖动= 0,提取结果降低了错误率,节约了资源,仍然检测到唇部特征,成功进行了唇部着色仿真。通过观察还发现,优化后的硬盘资源节省69.36%,RAM节省30.8%,CPU节省3.8%;将错误率降低0.058%;并将推理速度提高39%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyperparameter Optimization on Ensemble Regression Tree for Lip Coloring Simulation
Technology helps us in many activities and keeps growing, so it makes activities more efficient, time-saving, using fewer resources and also information and entertainment are accessible. Machine Learning technology is the fastest-growing field in computer science that is used in many areas such as marketing, healthcare, manufacturing, information security, and transportation. One of the machine learning methods is the Ensemble of Regression Tree (ERT) which has succeeded in detecting facial features on the eyebrows, eyes, nose, and lips. However, utilization ERT method has not been found to detect specific areas such as lips only for gaining optimization. Then this research will be conducted to extract the facial feature annotation dataset from the iBUG 300W dataset with 68 facial features to 20 lip area points. The results of the extraction are reduced error rate, resources saving, lip features still detected and lip coloring simulation was successfully carried out using the configuration of hyperparameter values, tree = 4, regularization = 0.25, cascade = 8, feature pool = 500, oversampling = 40 and translation jitter = 0. From observations also discovered optimization that hard disk resource savings are 69.36%, RAM 30.8%, and CPU 3.8%; reduce the error rate by 0.058%; and increase inference speed by 39%.
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