Academic Journal of Engineering and Technology Science, 2024, 7(5); doi: 10.25236/AJETS.2024.070511.
Junliang Li1, Chunyu Li2
1West Yunnan University, Lincang, Yunnan, China
2School of Teacher Education, Qujing Normal University, Qujing, Yunnan, China
In the course of social development and progress, the mental health of contemporary people has never been taken as the focus and received enough attention and attention. After mental health problems, most people often choose not to choose psychological counseling, and even fear it. In order to solve the contemporary people’s fear of psychological counseling and the uneven level and single form of mental health counseling services, this paper designs a mental health counseling service platform based on multi-sensor information fusion. The platform uses multi-sensor information fusion technology to process a large amount of user characteristic data, analyzes the user's mental health status, and matches psychological counselors who are highly adaptable to the user's needs. It provides more personalized mental health services. Finally, through the functional comparison test, the user's sense of use test and the overall system test, it compares the function usage data of the mental health consulting service platform under the traditional mode and the mental health consulting service platform based on multi-sensor information fusion. The test results show that in the psychological test function part, the overall mean value of the test questions professionalism and user matching under the multi-sensor information fusion is 11.15% higher than that of the traditional model. In the expert consultation function, the multi-sensor fusion positioning speed is 1.03 times faster than the traditional mode. This shows that multi-sensor information fusion technology can process user data more quickly and accurately, can meet the actual needs of users, and can solve the user's mental health problems to a certain extent, and has strong practicability.
Multi-sensor Information Fusion, Mental Health, Psychological Counseling, Mental Health Service Platform
Junliang Li, Chunyu Li. Research and Implementation of Mental Health Consultation Service Platform Based on Multi-sensor Information Fusion. Academic Journal of Engineering and Technology Science (2024) Vol. 7, Issue 5: 79-87. https://doi.org/10.25236/AJETS.2024.070511.
[1] Liu B J, Yang Q W, Xiang W U, et al. Application of Multi-sensor Information Fusion in the Fault Diagnosis of Hydraulic System. International Journal of Plant Engineering & Management, 2017, 22 (01): 12-20.
[2] Lu Y, Wang H, Hu F, et al. Effective recognition of human lower limb jump locomotion phases based on multi-sensor information fusion and machine learning. Medical & Biological Engineering & Computing, 2021, 59 (4): 883-899.
[3] Zhu X, Shi T, Jin X, et al. Multi-sensor information fusion based control for VAV systems using thermal comfort constraints. Building Simulation, 2021, 14 (4): 1047-1062.
[4] Xiangyu, Xu, Mei, et al. An Indoor Pedestrian Localization Algorithm Based on Multi-Sensor Information Fusion. Journal of Computer and Communications, 2017, 05 (3): 102-115.
[5] Merson A I, Jasche J, Abdalla F B, et al. Halo detection via large-scale Bayesian inference. Monthly Notices of the Royal Astronomical Society, 2018 (2): 1340-1355.
[6] Lazarevic V, Holman E G, Oswald R F, et al. Relations Between Economic Well-Being, Family Support, Community Attachment, and Life Satisfaction Among LGBQ Adults. Journal of Family & Economic Issues, 2016, 37 (4): 594-606.
[7] ZHANG, Yingjie, Wentao Yan, Geok Soon Hong, Jerry Fuh Hsi Fuh, Di Wang, Xin Lin, et al. Data fusion analysis in the powder-bed fusion AM process monitoring by Dempster-Shafer evidence theory. Rapid Prototyping Journal, 2021, 28 (5): 841-854.
[8] LIN, Yun, Yun Lin, Yuyao Li, Xuhong Yin, Zheng Dou. Multisensor fault diagnosis modeling based on the evidence theory. IEEE Transactions on Reliability, 2018, 67 (2): 513-521.
[9] CHEN, Musheng, Zhishan Cai, Yongxi Zeng & Yanzhong Yu. Multi-sensor data fusion technology for the early landslide warning system. Journal of Ambient Intelligence and Humanized Computing, 2023, 14 (8): 11165-11172.
[10] Zhao, Guangzhe, Aiguo Chen, Guangxi Lu, Wei Liu. Data fusion algorithm based on fuzzy sets and DS theory of evidence. " Tsinghua Science and Technology 2019, 25 (1): 12-19.