End-to-end dilated convolution network for document image semantic segmentation基于膨胀卷积网络的端到端文档语义分割

被引:0
作者
Can-hui Xu
Cao Shi
Yi-nong Chen
机构
[1] Qingdao University of Science and Technology,School of Information Sciences and Technology
[2] Arizona State University,School of Computing, Informatics and Decision Systems Engineering
来源
Journal of Central South University | 2021年 / 28卷
关键词
semantic segmentation; document images; deep learning; NVIDIA jetson nano; 语义分割; 文档图像; 深度学习; 英伟达 Jetson Nano;
D O I
暂无
中图分类号
学科分类号
摘要
Semantic segmentation is a crucial step for document understanding. In this paper, an NVIDIA Jetson Nano-based platform is applied for implementing semantic segmentation for teaching artificial intelligence concepts and programming. To extract semantic structures from document images, we present an end-to-end dilated convolution network architecture. Dilated convolutions have well-known advantages for extracting multi-scale context information without losing spatial resolution. Our model utilizes dilated convolutions with residual network to represent the image features and predicting pixel labels. The convolution part works as feature extractor to obtain multidimensional and hierarchical image features. The consecutive deconvolution is used for producing full resolution segmentation prediction. The probability of each pixel decides its predefined semantic class label. To understand segmentation granularity, we compare performances at three different levels. From fine grained class to coarse class levels, the proposed dilated convolution network architecture is evaluated on three document datasets. The experimental results have shown that both semantic data distribution imbalance and network depth are import factors that influence the document’s semantic segmentation performances. The research is aimed at offering an education resource for teaching artificial intelligence concepts and techniques.
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页码:1765 / 1774
页数:9
相关论文
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