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Segmentation for Human Motion Injury Ultrasound Medical Images Using Deep Feature Fusion

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  • Jingmeng Sun
  • Yifei Liu
  • Xiaofeng Li

Abstract

Image processing technology assists physicians in the analysis of athletes’ human motion injuries, not only to improve the accuracy of athletes’ injury detection but also to improve the localization and recognition of injury locations. It is important to accurately segment human motion injury ultrasound medical images. To address many problems such as poor effect of traditional ultrasonic medical image segmentation algorithm for a sports injury. Therefore, we propose a segmentation algorithm for human motion injury ultrasound medical images using deep feature fusion. First, the accurate estimated value of human posture is extracted and combined with image texture features and image gray value as the target feature value of the ultrasonic medical image of human motion injury. Second, the image features are deeply fused by an adaptive fusion algorithm to enhance the image resolution. Finally, the best segmentation value of the image is obtained by the trained support vector machine to realize the accurate segmentation of human motion injury ultrasonic medical image. The results show that the average accuracy of the posture accurate estimation of the proposed algorithm is 95.97%; the segmentation time of the human motion injury ultrasound medical image of the proposed algorithm is below 150 ms; and the convergence of the algorithm is completed when the number of iterations is 3. The maximum segmentation error rate is 2.68%. The image segmentation effect is consistent with the ideal target segmentation effect. The proposed algorithm has important application value in the field of ultrasonic medical diagnosis of sports injury.

Suggested Citation

  • Jingmeng Sun & Yifei Liu & Xiaofeng Li, 2022. "Segmentation for Human Motion Injury Ultrasound Medical Images Using Deep Feature Fusion," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-9, August.
  • Handle: RePEc:hin:jnlmpe:4825720
    DOI: 10.1155/2022/4825720
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