Abstract
Handwritten notes are one important component of students' learning process, which is used to record what they have learned in class or tease out knowledge after class for reflection and further strengthen the learning effect. It also helps a lot during review. We hope to divide handwritten notes (Japanese) into different parts, such as text, mathematical expressions, charts, etc., and quantify them to evaluate the condition of the notes and compare them among students. At the same time, data on students' learning behaviors in the course are collected through the online education platform, such as the use time of textbook and attendance, as well as the scores of the online quiz and course grade. In this paper, the analysis of the relationship between the segmentation results of handwritten notes and learning behavior are reported, as well as the research on automatic page segmentation based on deep learning.
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CITATION STYLE
Li, B., Minematsu, T., Taniguchi, Y., Okubo, F., & Shimada, A. (2022). How Does Analysis of Handwritten Notes Provide Better Insights for Learning Behavior? In ACM International Conference Proceeding Series (pp. 549–555). Association for Computing Machinery. https://doi.org/10.1145/3506860.3506915
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