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Real-Time Human Pose Estimation via Cascaded Neural Networks Embedded with Multi-task Learning

机译:通过嵌入多任务学习的级联神经网络进行实时人体姿态估计

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Deep convolutional neural networks (DCNNs) have recently been applied to Human pose estimation (HPE). However, most conventional methods have involved multiple models, and these models have been independently designed and optimized, which has led to sub-optimal performance. In addition, these methods based on multiple DCNNs have been computationally expensive and unsuitable for realtime applications. This paper proposes a novel end-to-end framework implemented with cascaded neural networks. Our proposed framework includes three tasks: (1) detecting regions which include parts of the human body, (2) predicting the coordinates of human body joints in the regions, and (3) finding optimum points as coordinates of human body joints. These three tasks are jointly optimized. Our experimental results demonstrated that our framework improved the accuracy and the running time was 2.57 times faster than conventional methods.
机译:深度卷积神经网络(DCNN)最近已应用于人体姿态估计(HPE)。但是,大多数常规方法都涉及多个模型,并且这些模型已经过独立设计和优化,导致性能欠佳。另外,这些基于多个DCNN的方法在计算上昂贵并且不适用于实时应用。本文提出了一种使用级联神经网络实现的新型端到端框架。我们提出的框架包括三个任务:(1)检测包括人体部分的区域;(2)预测区域中人体关节的坐标;(3)找到最佳点作为人体关节的坐标。这三个任务是共同优化的。我们的实验结果表明,我们的框架提高了准确性,并且运行时间比传统方法快了2.57倍。

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