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Improved Convolutional Pose Machines for Human Pose Estimation Using Image Sensor Data

机译:使用图像传感器数据进行人体姿态估计的改进卷积姿态机

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摘要

In recent years, increasing human data comes from image sensors. In this paper, a novel approach combining convolutional pose machines (CPMs) with GoogLeNet is proposed for human pose estimation using image sensor data. The first stage of the CPMs directly generates a response map of each human skeleton’s key points from images, in which we introduce some layers from the GoogLeNet. On the one hand, the improved model uses deeper network layers and more complex network structures to enhance the ability of low level feature extraction. On the other hand, the improved model applies a fine-tuning strategy, which benefits the estimation accuracy. Moreover, we introduce the inception structure to greatly reduce parameters of the model, which reduces the convergence time significantly. Extensive experiments on several datasets show that the improved model outperforms most mainstream models in accuracy and training time. The prediction efficiency of the improved model is improved by 1.023 times compared with the CPMs. At the same time, the training time of the improved model is reduced 3.414 times. This paper presents a new idea for future research.
机译:近年来,越来越多的人类数据来自图像传感器。在本文中,提出了一种将卷积姿势机(CPM)与GoogLeNet相结合的新颖方法,用于使用图像传感器数据进行人体姿势估计。 CPM的第一阶段直接从图像生成每个人体骨骼关键点的响应图,在其中我们引入了GoogLeNet的一些图层。一方面,改进的模型使用更深的网络层和更复杂的网络结构来增强低级特征提取的能力。另一方面,改进的模型应用了微调策略,这有利于估计精度。此外,我们引入了初始结构以大大减少模型的参数,从而显着减少了收敛时间。在多个数据集上进行的广泛实验表明,改进后的模型在准确性和训练时间上优于大多数主流模型。与CPM相比,改进模型的预测效率提高了1.023倍。同时,改进模型的训练时间减少了3.414倍。本文提出了一个新的想法,以供将来研究。

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