Support Vector Machines in Smile detection: A comparison of auto-tuning standard processes in Gaussian kernel

João Gondim, M. Maia, Ana Caroline Lopes Rocha, Felipe Argolo, Anderson Ara, A. Loch
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Abstract

Support Vector Machines are a set of machine learning models that have great performance in several tasks as well as on image classification and object recognition. However, the proper choice of model's hyperparameters has a great influence on the outcomes and the general capacity performance. In this paper, we explore some different traditional auto-tuning processes to estimate σ hyper-parameter for SVMs Gaussian kernel. These processes are common and also implemented on standard software of data science languages. The paper considers some different situations on smile detection. The results are composed by simulation study, two benchmark image applications and a real video data application.
支持向量机在微笑检测中的应用:高斯核中自调优标准过程的比较
支持向量机是一组机器学习模型,在许多任务以及图像分类和对象识别方面都有很好的表现。然而,模型超参数的选择对结果和总体容量性能有很大的影响。本文探讨了几种不同的传统自整定方法来估计支持向量机高斯核的σ超参数。这些过程是常见的,也可以在数据科学语言的标准软件上实现。本文考虑了微笑检测的几种不同情况。结果由仿真研究、两个基准图像应用和一个真实视频数据应用组成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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