英文摘要 |
Background: The day care center is a good choice for disabled elders in Taiwan. The application of smart technology to the long-term care field in the community can reduce the loading of caregivers. Purpose: This study collected images of the subject which was doing forward reach movement. The purpose is to confirm whether the AI can correctly classify the subjects' balance movements as normal or abnormal based on image recognition technology. Method: The experiment was carried out in a day care center. A total of 16 cases were received, of which 6 were marked as abnormal, and the rest were marked as normal. Then we used data mining and visual analysis software to analyze the image data, embed, build classification models and predicted results. Results: The Neural Network classifier had the best classification accuracy, with an accuracy rate of 0.938. The next best classifier was Logistic Regression with an accuracy of 0.875, the Fandom Forest algorithm had a classification accuracy of 0.750, and the Support Vector Machine had a classification accuracy of 0.625, the lowest among the four classifiers. Conclusion: The results of this pilot study found that Neural Network classification has the highest classification accuracy, followed by Logistic Regression. The study also found that the image shooting angle and distance may affect the classification accuracy. As images of only 16 subjects were collected, the results are only for the researcher's self-reference and details that must be considered in the experimental design in planning future studies. |