Publications by authors named "Fuxing He"

Article Synopsis
  • * The new model significantly enhances detection performance, achieving an average accuracy of 86.74% for multi-target recognition and 89.12% for recognizing ping-pong balls under various lighting conditions, particularly in low light.
  • * The improved model excels in trajectory prediction with minimal errors (4.5 mm to 35.58 mm) and processes 85 frames per second, offering valuable insights for table tennis training and the potential applications in other sports.
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Electrocardiogram (ECG) signal identification technology is rapidly replacing traditional fingerprint, face, iris and other recognition technologies, avoiding the vulnerability of traditional recognition technologies. This paper proposes an ECG signal identification method based on the wavelet transform algorithm and the probabilistic neural network by whale optimization algorithm (WOA-PNN). Firstly, Q, R and S waves are detected by wavelet transform, and the P and T waves are detected by local windowed wavelet transform.

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The biometric identification method is a current research hotspot in the pattern recognition field. Due to the advantages of electrocardiogram (ECG) signals, which are difficult to replicate and easy to obtain, ECG-based identity identification has become a new direction in biometric recognition research. In order to improve the accuracy of ECG signal identification, this paper proposes an ECG identification method based on a multi-scale wavelet transform combined with the unscented Kalman filter (WT-UKF) algorithm and the improved particle swarm optimization-support vector machine (IPSO-SVM).

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