Journal of Jilin University(Engineering and Technology Edition) ›› 2025, Vol. 55 ›› Issue (9): 3042-3048.doi: 10.13229/j.cnki.jdxbgxb.20240529

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Adaptive real⁃time gesture classification algorithm based on gesture frame sequence extraction

Lin LIN1,2(),Yu-xin CHEN1,Wei-zhi NAI1,2   

  1. 1.College of Communication Engineering,Jilin University,Changchun 130021,China
    2.Inteligent Signal Identification Equipment Engineering and Technology Research Center of Jilin Province,Jilin University,Changchun 130021,China
  • Received:2024-05-14 Online:2025-09-01 Published:2025-11-14

Abstract:

In order to improve the processing efficiency of the gesture recognition algorithm for real-time gestures, an adaptive real-time classification algorithm based on gesture frame sequence extraction was proposed. The algorithm extends the frame sequence of the current frame of image data extracted in real-time, completes the classification task with the sequentially extracted multi-frame sequences and performs the joint discriminant, which can recognize static and dynamic gestures at the same time, and obtains the real-time recognition results quickly. The proposed algorithm acccupies less computational resources to shortens the recognition time, solves the delay problem of gesture recognition, and improves the real-time performance. Through the gesture recognition real-time performance experimental test, the proposed algorithm controls the average recognition time of gesture within 0.4 s.

Key words: communications and information systems, real-time gesture recognition, human-computer interaction, frame sequence extraction

CLC Number: 

  • TP391.41

Fig.1

Algorithm diagram for real-time gesture trajectory construction based on random line segments"

Fig.2

Schematic diagram of gesture feature trajectory construction"

Fig.3

Hand signals 0~9"

Fig.4

Gesture recognition rate with threshold coefficient transformation plot"

Fig.5

Schematic diagram of adaptive and non-adaptive algorithms"

Fig.6

Timestamp of the video frame in which the gesture was made and showing gesture recognition results"

Table 1

Ten gesture recognition response schedules"

手势

标签

非自适应算法识别响应时间/s自适应算法识别响应时间/s识别响应时间缩短比率/%
01.330.4069.9
11.380.3773.2
21.370.3375.9
31.400.3773.6
41.510.4768.9
51.500.4967.3
61.200.3075.0
71.340.4367.9
81.350.4070.4
91.210.2381.0
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