2021-04-08T10:22:26Z
2021-04-08T10:22:26Z
2019-04-18
2021-04-08T10:22:26Z
Action recognition is a challenging task that plays an important role in many robotic systems, which highly depend on visual input feeds. However, due to privacy concerns, it is important to find a method which can recognise actions without using visual feed. In this paper, we propose a concept for detecting actions while preserving the test subject's privacy. Our proposed method relies only on recording the temporal evolution of light pulses scattered back from the scene. Such data trace to record one action contains a sequence of one-dimensional arrays of voltage values acquired by a single-pixel detector at 1 GHz repetition rate. Information about both the distance to the object and its shape are embedded in the traces. We apply machine learning in the form of recurrent neural networks for data analysis and demonstrate successful action recognition. The experimental results show that our proposed method could achieve on average 96.47 % accuracy on the actions walking forward, walking backwards, sitting down, standing up and waving hand, using recurrent neural network.
Article
Published version
English
Robots autònoms; Espectrometria de masses de temps de vol; Autonomous robots; Time-of-flight mass spectrometry
MDPI
Reproducció del document publicat a: https://doi.org/10.3390/e21040414
Entropy, 2019, vol. 21, num. 4, p. 414
https://doi.org/10.3390/e21040414
cc-by (c) Ofodile, Ikechukwu et al., 2019
http://creativecommons.org/licenses/by/3.0/es