| Literature DB >> 33120904 |
Maria Skublewska-Paszkowska1, Pawel Powroznik1, Edyta Lukasik1.
Abstract
Human movement analysis is very often applied to sport, which has seen great achievements in assessing an athlete's progress, giving further training tips and in movement recognition. In tennis, there are two basic shots: forehand and backhand, which are performed during all matches and training sessions. Recognition of these movements is important in the quantitative analysis of a tennis game. In this paper, the authors propose using Spatial-Temporal Graph Neural Networks (ST-GCN) to challenge the above task. Recognition of the shots is performed on the basis of images obtained from 3D tennis movements (forehands and backhands) recorded by the Vicon motion capture system (Oxford Metrics Ltd, Oxford, UK), where both the player and the racket were recorded. Two methods of putting data into the ST-GCN network were compared: with and without fuzzying of data. The obtained results confirm that the use of fuzzy input graphs for ST-GCNs is a better tool for recognition of forehand and backhand tennis shots relative to graphs without fuzzy input.Entities:
Keywords: ST-GCN; fuzzy data; tennis movement recognition
Mesh:
Year: 2020 PMID: 33120904 PMCID: PMC7662764 DOI: 10.3390/s20216094
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1A spatial temporal graph of skeleton. Red dots represent joints and other characteristic points. Red lines represent connections between points within the lower limbs, blue—upper limbs, green—spine, yellow—tennis racket.
Figure 2An example of raw forehand shot phases. (a) beginning of the preparation phase, (b) end of the preparation phase (c) hitting the ball and (d) swinging the racket after the hit.
Figure 3Scheme of used classifier consisting of the ST-GCN part and the active features knowledge base.
Figure 4Efficiency plot of ST-GCN classifier.
Classification results obtained for the ST-GCN network.
| Percentage of Data Belonging to | Forehand | Backhand | No Shot |
|---|---|---|---|
| 45% | 74.8% | 74.3% | 78.2% |
| 50% | 74.4% | 74.2% | 73.1% |
| 55% | 75.6% | 76.1% | 74.5% |
| 60% | 68.5% | 74.3% | 64.1% |
| 65% | 81.2% | 77.1% | 69.6% |
Classification results obtained for the Fuzzy ST-GCN network.
| Percentage of Data Belonging to | Forehand | Backhand | No Shot |
|---|---|---|---|
| 45% | 74.8% | 74.3% | 78.2% |
| 50% | 84.4% | 84.1% | 78.1% |
| 55% | 85.4% | 86.2% | 82.5% |
| 60% | 86.5% | 87.3% | 86.3% |
| 65% | 91.2% | 92.8% | 95.9% |
The number of epochs.
| Percentage of Data Set | ST-GCN | Fuzzy ST-GCN |
|---|---|---|
| 45% | 648 | 653 |
| 50% | 525 | 507 |
| 55% | 497 | 482 |
| 60% | 484 | 416 |
| 65% | 473 | 362 |
Figure 5Efficiency of Fuzzy ST-GCN classifier.