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Weakly structured information aggregation for upper-body posture assessment using ConvNets

机译:使用ConvNets进行弱结构信息聚合以进行上身姿势评估

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Posture assessment aims to determine the risk associated with poor posture and thus avoid injury in subjects. Upper-body posture assessment from images offers an attractive alternative to manual methods by directly extracting relevant features for classification. A deep convolutional neural network is proposed to extract structured features from different body parts and learn shared features that are used to determine the appropriate assessment. The structured features are learned with triplet-based rank constraints based on head and torso separately. The shared feature and assessment function are learned with soft-max constraints based on posture risk measurements. Experimental evaluation on a self-collected upper-body posture dataset has verified the efficacy of the proposed method and network architecture.
机译:姿势评估的目的是确定与不良姿势相关的风险,从而避免受试者受伤。通过直接提取相关特征进行分类,从图像上体姿势评估提供了一种有吸引力的替代手动方法的方法。提出了深度卷积神经网络,以从不同身体部位提取结构化特征,并学习用于确定适当评估的共享特征。通过分别基于头部和躯干的基于三重态的等级约束来学习结构化特征。共享特征和评估功能是基于姿势风险测量值通过soft-max约束来学习的。对自我收集的上身姿势数据集的实验评估证明了该方法和网络体系结构的有效性。

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