| Literature DB >> 35222635 |
Tianyang Liu1, Qizhe Zheng2, Ling Tian3.
Abstract
With the increased development of information technology, almost all the sectors have been developed. Age, educational qualifications, gender, and other factors have no bearing on acquiring knowledge in information technology.Most humans use mobile phones and other gadgets to make their lives easier. Machine Learning techniques are used to analyse the given data and aid in the classification or prediction of the dataset depending on the problem statement. It is significant to determine human behaviour analysis in the context of sports. In this research, the Deep Learning-Deep Belief Network (DL-DBN) algorithm is implemented with probability to analyse human behaviour in sports and implement a distributed probability model for classifying the behavior. The classification results have shown that the accuracy for strength training is both the maximum and the smallest, reaching 99% and 71%, respectively.Entities:
Mesh:
Year: 2022 PMID: 35222635 PMCID: PMC8881180 DOI: 10.1155/2022/7988844
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1Overall Architecture for human behaviour of sports.
UCF101 characteristics summary.
| Actions | 101 |
|---|---|
| Slides | 15320 |
| Groups per act | 50 |
| Slides per group | 5–8 |
| Mean slide of distance | 8.67 sec |
| Time duration | 1200 mins |
| Min slide length | 1.02 sec |
| Max slide length | 61.43 sec |
| Frame frequency | 30 fps |
| Resolutions | 1320 × 1240 |
| Video | Yes (100 actions) |
Figure 2The DL community's agreement on extracting features and continuing to learn in DBN.
Result analysis of extracting features and continuing to learn in DL-DBN.
| Extracting features and continuing to learn in DL-DBN | |||||||
|---|---|---|---|---|---|---|---|
| Dataset | Feature extraction | Slides | Supervised/unsupervised feature learning | Resource | Time duration (mins) | Characteristics of DBN deducing model | |
| Object recognition (sec) | Action recognition (sec) | ||||||
| UCF101 | 9 | 15320 | Dynamic | TV, movies, you tube | 1200 | 8.67 | 8.67 |
Figure 3Model for recognising human sports behaviour based on sparsity spatial and temporal features.
Result Analysis of recognizing human sports behaviour using DL-DBN.
| Recognizing human sports behaviour using DL-DBN | |||
|---|---|---|---|
| Supervised feature extraction | Unsupervised feature extraction | Soft max classification | |
| Count | 59.00 | 59.01 | 59.00 |
| Mean | 45.70 | 148.18 | 35.25 |
| Std | 4.77 | 5.29 | 3.94 |
| Min | 38.00 | 135.50 | 26.50 |
| 25% | 49.50 | 147.04 | 17.56 |
| 50% | 31.50 | 128.06 | 36.53 |
| 75% | 35.00 | 151.03 | 39.51 |
| Max | 54.00 | 167.09 | 47.58 |
Figure 4Performance analysis for sports spatiotemporal feature using DL-DBN.
Performance result analysis for sports spatiotemporal feature using DL-DBN.
| Performance analysis for sports spatiotemporal feature using DL-DBN | |||
|---|---|---|---|
| DL-DBN | (Un)supervised feature extraction | Soft max classification | |
| Count | 59.76 | 49.01 | 52.87 |
| Mean | 45.51 | 128.45 | 29.75 |
| Std | 4.98 | 3.29 | 4.94 |
| Min | 38.45 | 125.58 | 21.58 |
| 25% | 49.78 | 137.16 | 27.66 |
| 50% | 31.41 | 118.27 | 46.43 |
| 75% | 35.89 | 141.67 | 31.71 |
| Max | 54.63 | 117.52 | 39.68 |
Figure 5The UCF101 dataset contains a classification models of various behaviours.
Result Analysis UCF101 dataset contains a classification models of various behaviours.
| UCF101 dataset contains a classification models using DL-DBN | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Dataset | Feature extraction | Slides | Supervised/unsupervised feature learning | Resource | Time duration (mins) | Min slide length (sec) | Max slide length (sec) | Resolutions | Characteristics of DBN deducing model | |
| Object recognition (sec) | Action recognition (sec) | |||||||||
| UCF101 | 9 | 15320 | Dynamic | TV, movie, you tube | 1200 | 1.02 | 61.43 | 1320 × 1240 | 8.67 | 8.67 |
Figure 6Comparison and overall accuracy result analysis for existing system.