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Human standing posture recognition based on CNN and pressure floor

Li Guan, Zhifeng Liu, Ligang Cai, Jun Yan

Year
2019
Citations
5

Abstract

The goal of this study was to recognize human standing postures in human-robot collaborations such that the robot can serve the human operator better. An intelligent sensing floor was developed based on a thin-film pressure sensor and a human standing posture dataset was obtained by transforming th e pressure data into a pressure image. A human standing posture recognition method based on an improved convolutional neural network is proposed. The results of the experiments demonstrate that a convolutional neural network can be used in the field of pressure images. The proposed method returned a recognition rate of 96.6%. Compared to the traditional neural network, the improved convolutional neural network model has better performance. The study results are expected to be used in standing posture monitoring to provide additional data for a robot in a human-robot collaboration system.

Keywords

Convolutional neural networkComputer scienceArtificial intelligenceRobotComputer visionArtificial neural networkHuman–robot interactionField (mathematics)Pressure sensorPattern recognition (psychology)

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