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首页> 外文期刊>IEEE Transactions on Systems, Man, and Cybernetics >An Automatic Design of Factors in a Human-Pose Estimation System Using Neural Networks
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An Automatic Design of Factors in a Human-Pose Estimation System Using Neural Networks

机译:基于神经网络的人体姿态估计系统中因素的自动设计

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Previous studies on human-pose estimation (HPE) rely on the design of factors to represent underlying probability distributions that model human poses. However, designing those factors manually is laborious. Moreover, manually designed factors might not represent underlying probability distributions properly. In this paper, we utilize feedforward neural networks (NNs) to design factors of our previous work on HPE and build an NN-based HPE system. We first propose a mapping that converts a Bayesian network to a feedforward NN. Then, the system is built based on the proposed mapping that consists of two steps: 1) structure identification and 2) parameter learning. In the structure identification, we develop a bottom-up approach to build a feedforward NN while preserving a Bayesian-network structure. In the parameter learning, we create a part-based approach to learn synaptic weights by decomposing a feedforward NN into parts. Using the proposed mapping, our previous work of an action-mixture model (AMM) for HPE is converted to a feedforward NN called NN-AMM. Based on the concept of distributed representation, NN-AMM is further modified to a scalable feedforward NN called NND-AMM. The NN-based HPE system is then built by using viewpoint-and-shape-feature-histogram features extracted from 3-D-point-cloud input and NND-AMM to estimate 3-D human poses. The results showed that the proposed mapping could design AMM factors automatically. NND-AMM could provide more accurate human-pose estimates with fewer hidden neurons than both AMM and NN-AMM could. Both NN-AMM and NND-AMM could adapt to different types of input, showing the adaptability of using feedforward NNs to design factors.
机译:先前关于人体姿势估计(HPE)的研究依赖于设计代表人体姿势的潜在概率分布的因子设计。但是,手动设计这些因素很麻烦。此外,手动设计的因素可能无法正确表示潜在的概率分布。在本文中,我们利用前馈神经网络(NNs)设计我们先前关于HPE的工作因素,并构建基于NN的HPE系统。我们首先提出将贝叶斯网络转换为前馈NN的映射。然后,基于所提出的映射来构建系统,该映射包括两个步骤:1)结构识别和2)参数学习。在结构识别中,我们开发了一种自下而上的方法来构建前馈NN,同时保留贝叶斯网络结构。在参数学习中,我们通过将前馈神经网络分解为多个部分,从而创建了一种基于零件的方法来学习突触权重。使用提议的映射,我们先前用于HPE的动作混合模型(AMM)的工作被转换为称为NN-AMM的前馈NN。基于分布式表示的概念,NN-AMM被进一步修改为可缩放的前馈NN,称为NND-AMM。然后,通过使用从3-D点云输入和NND-AMM中提取的视点和形状特征直方图特征来构建基于NN的HPE系统,以估计3D人体姿势。结果表明,所提出的映射可以自动设计AMM因子。与AMM和NN-AMM相比,NND-AMM可以用更少的隐藏神经元提供更准确的人体姿势估计。 NN-AMM和NND-AMM都可以适应不同类型的输入,这表明使用前馈NN设计因素的适应性。

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