IMPROVEMENT OF IMAGE SEGMENTATION MODEL FOR HANDWRITTEN NOTEBOOK ANALYTICS
Yunyu Zhou, Tsubasa Minematsu, Atsushi Shimada
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SPS
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The main objective of this paper is to improve the image segmentation model for handwritten notebook analytics. We conducted a considerable amount of research in this area to increase the accuracy and efficiency of segmentation. To address the issues with traditional methods, we introduced attention mechanism and recursive residual convolutional neural network in the multi-task U-Net model. Through training and testing the model on handwritten notebook dataset and compared it with other existing technologies, we demonstrated the effectiveness of this method. The results showed that the model had a significant improvement in accuracy. Therefore, the research findings in this paper are important for improving the technology of handwritten notebook analytics.