4.6 Article

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

期刊

SENSORS
卷 19, 期 3, 页码 -

出版社

MDPI
DOI: 10.3390/s19030718

关键词

human pose estimation; convolutional pose machines; GoogLeNet; fine-tuning; image sensor

资金

  1. Guangxi Key Research and Development Program [AB17195053, AB18126053, AB18126063]
  2. Guilin Science and Technology Development Program [20180107-4]
  3. National Marine Technology Program for Public Welfare [201505002]
  4. National Natural Science Foundation of China [61762025, 61662014]
  5. Guangxi Natural Science Foundation [2017GXNSFAA198226, 2018GXNSFAA294052]
  6. Guangxi Key Laboratory of Trusted Software [kx201510, kx201413]
  7. Guangxi Colleges and Universities Key Laboratory of Cloud Computing and Complex System [14106, 15204]
  8. Innovation Project of GUET Graduate Education [2017YJCX52, 2018YJCX42]
  9. Guangxi Cooperative Innovation Center of Cloud Computing and Big Data [YD16E01, YD16E04, YD1703, YD1712, YD1713, YD1714]
  10. Guangxi Colleges and Universities Key Laboratory of Intelligent Processing of Computer Image and Graphics [GIIP201603]

向作者/读者索取更多资源

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.

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