Research on Fast Text Recognition Method for Financial Ticket Image
Fukang Tian, Haiyu Wu, Bo Xu

TL;DR
This paper introduces a fast and accurate deep learning-based method for recognizing various types of financial tickets, significantly improving speed while maintaining precision, to reduce labor costs in financial accounting.
Contribution
It proposes a novel recognition framework dividing tickets into categories and an optimized Faster RCNN-based network tailored for financial tickets, enhancing speed and accuracy.
Findings
FTFDNet increases processing speed by 50%.
The method effectively recognizes 482 types of financial tickets.
Achieves comparable accuracy to leading models in the field.
Abstract
Currently, deep learning methods have been widely applied in and thus promoted the development of different fields. In the financial accounting field, the rapid increase in the number of financial tickets dramatically increases labor costs; hence, using a deep learning method to relieve the pressure on accounting is necessary. At present, a few works have applied deep learning methods to financial ticket recognition. However, first, their approaches only cover a few types of tickets. In addition, the precision and speed of their recognition models cannot meet the requirements of practical financial accounting systems. Moreover, none of the methods provides a detailed analysis of both the types and content of tickets. Therefore, this paper first analyzes the different features of 482 kinds of financial tickets, divides all kinds of financial tickets into three categories and proposes…
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Taxonomy
TopicsCurrency Recognition and Detection · Handwritten Text Recognition Techniques · Retinal Imaging and Analysis
