基于多任务高斯过程回归和中医五行系统的人脸分类

Wu Qing-song, Su Song-zhi, Wu Chang-wen
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引用次数: 0

摘要

以“五行”为基础的中医体质分类体系是体质研究的基础和核心材料,是适合某一群体体质特征的分类体系。适当的物理分类有助于提高疾病的诊断效率。我们认为,原始问题不能简单地描述为五个独立的任务,就像对每个元素类别使用五个不同模型的独立得分推理一样。因此,我们提出了一种基于Insightface算法和多任务高斯过程回归(MTGPR)模型的人脸分类方法。MTGPR是一种尝试仅基于任务标识和每个任务的观察数据来学习任务间依赖关系的模型。它使用输入特征x上的参数化协方差函数来开发“自由形式”的任务相似性矩阵。在MTGPR模型中,这是通过在输入观测值的特征$x$上有一个公共协方差函数来实现的。实验结果表明,与传统的基于resnet的分类方法相比,本文方法的分类效果得到了改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Classification Based on Multi-task Gaussian Process Regression and Chinese Medicine Five Element System
TCM(Traditional Chinese Medicine) physical classi-fication system based on “Five Elements” is the foundation and core material of physical study, and it is a classification system appropriate for a group's physical characteristics. Obtaining appropriate physical classification can aid in disease diagnosis efficiency. We believe that the original problem cannot be simply described as five separate tasks, like independent score inference using five different models for each element category. So we propose an approach based on the Insightface algorithm and Multi-Task Gaussian Process Regression (MTGPR) model to classify faces. MTGPR is a model that attempts to learn inter-task dependencies based solely on the task identities and the observed data for each task. It uses a parameterized covariance function over the input features x to develop a “free-form” task-similarity matrix. In MTGPR model, this is achieved by having a common covariance function over the features $x$ of the input observations. The experimental results show that our proposed method has improved results compared to the traditional Resnet-based classification method.
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