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International Journal of Educational Innovation and Science, 2022, 3(3); doi: 10.38007/IJEIS.2022.030308.

Data Fusion Wearable Technology in the Teaching of College Table Tennis Elective Courses

Author(s)

Kothapalli Lakshmmi

Corresponding Author:
Kothapalli Lakshmmi
Affiliation(s)

Tamale Technical University, Ghana

Abstract

In this paper, Intelligent sensors are used in college ping-pong teaching. The use of intelligent sensor-assisted teaching can effectively stimulate students' interest in learning and improve learning initiative. At the same time, combined with data fusion wearable technology to monitor sports conditions The use of intelligent sensor-assisted teaching plays an active role in the application and mastery of student ping -pong techniques, and the improvement of basic physical quality is not significant. The use of intelligent sensor-assisted teaching can form a continuous guidance with the improvement of students' ping-pong technical level, which is conducive to maintaining the enthusiasm of students to learn ping-pong for a long time and establishing a sense of lifelong participation in ping-pong.

Keywords

Ping-Pong, Wireless Sensor, Teaching Methods, Intelligent

Cite This Paper

Kothapalli Lakshmmi. Data Fusion Wearable Technology in the Teaching of College Table Tennis Elective Courses. International Journal of Educational Innovation and Science (2022), Vol. 3, Issue 3: 68-91. https://doi.org/10.38007/IJEIS.2022.030308.

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