Leveraging Deep Convolutional Neural Network for Point Symbol Recognition in Scanned Topographic Maps

Author:

Huang Wenjun1ORCID,Sun Qun1,Yu Anzhu1ORCID,Guo Wenyue1,Xu Qing1,Wen Bowei1,Xu Li1

Affiliation:

1. Institute of Geospatial Information, Information Engineering University, Zhengzhou 450001, China

Abstract

Point symbols on a scanned topographic map (STM) provide crucial geographic information. However, point symbol recognition entails high complexity and uncertainty owing to the stickiness of map elements and singularity of symbol structures. Therefore, extracting point symbols from STMs is challenging. Currently, point symbol recognition is performed primarily through pattern recognition methods that have low accuracy and efficiency. To address this problem, we investigated the potential of a deep learning-based method for point symbol recognition and proposed a deep convolutional neural network (DCNN)-based model for this task. We created point symbol datasets from different sources for training and prediction models. Within this framework, atrous spatial pyramid pooling (ASPP) was adopted to handle the recognition difficulty owing to the differences between point symbols and natural objects. To increase the positioning accuracy, the k-means++ clustering method was used to generate anchor boxes that were more suitable for our point symbol datasets. Additionally, to improve the generalization ability of the model, we designed two data augmentation methods to adapt to symbol recognition. Experiments demonstrated that the deep learning method considerably improved the recognition accuracy and efficiency compared with classical algorithms. The introduction of ASPP in the object detection algorithm resulted in higher mean average precision and intersection over union values, indicating a higher recognition accuracy. It is also demonstrated that data augmentation methods can alleviate the cross-domain problem and improve the rotation robustness. This study contributes to the development of algorithms and the evaluation of geographic elements extracted from STMs.

Publisher

MDPI AG

Subject

Earth and Planetary Sciences (miscellaneous),Computers in Earth Sciences,Geography, Planning and Development

Reference44 articles.

1. A review of recent advances in scanned topographic map processing;Liu;Neurocomputing,2019

2. Drawing Road Networks with Mental Maps;Lin;IEEE Trans. Vis. Comput. Graph.,2014

3. Lladós, J., Valveny, E., Sánchez, G., and Marti, E. (2001, January 7–8). Symbol Recognition: Current Advances and Perspectives. Proceedings of the International Workshop on Graphics Recognition, Kingston, ON, Canada.

4. Towards the automated large-scale reconstruction of past road networks from historical maps;Uhl;Comput. Environ. Urban Syst.,2022

5. Road network evolution in the urban and rural United States since 1900;Burghardt;Comput. Environ. Urban Syst.,2022

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