We propose a Bayesian approximation to a deep learning architecture for 3D hand pose estimation. Through this framework, we explore and analyse the two types of uncertainties that are influenced either by data or by the learning capability. Furthermore, we draw comparisons against the standard estimator over three popular benchmarks. The first contribution lies in outperforming the baseline while in the second part we address the active learning application. We also show that with a newly proposed acquisition function, our Bayesian 3D hand pose estimator obtains lowest errors with the least amount of data. The underlying code is publicly available at https://github.com/razvancaramalau/al_bhpe.
翻译:我们建议对3D手的深层学习结构进行贝叶斯近似值估计。我们通过这个框架,探讨和分析受数据或学习能力影响的两种不确定因素。此外,我们对三个流行基准的标准估计器进行比较。第一个贡献在于优于基线,而第二个贡献则在于我们处理积极的学习应用程序。我们还表明,根据新提议的获取功能,我们的3D巴伊西亚手显示的估算器以最少的数据获得的错误最少。基本代码可在https://github.com/razvancaramalau/al_bhpe上公开查阅。