Information and Computer Science Department, King Fahd University of Petroleum & Minerals, Dhahran 31261, Saudi Arabia.
SDAIA-KFUPM Joint Research Center for Artificial Intelligence, Dhahran 31261, Saudi Arabia.
Sensors (Basel). 2023 Apr 25;23(9):4260. doi: 10.3390/s23094260.
Courtesy amount recognition from bank checks is an important application of pattern recognition. Although much progress has been made on isolated digit recognition for Indian digits, there is no work reported in the literature on courtesy amount recognition for Arabic checks using Indian digits. Arabic check courtesy amount recognition comes with its own unique challenges that are not seen in isolated digit recognition tasks and, accordingly, need specific approaches to deal with them. This paper presents an end-to-end system for courtesy amount recognition starting from check images as input to recognizing amounts as a sequence of digits. The system is a hybrid system, combining rule-based modules as well as machine learning modules. For the amount recognition system, both segmentation-based and segmentation-free approaches were investigated and compared. We evaluated our system on the CENPARMI dataset of real bank checks in Arabic. We achieve 67.4% accuracy at the amount level and 87.15% accuracy at the digit level on the test set consisting of 626 check images. The results are presented with detailed analysis, and some possible future work is identified. This work can be used as a baseline to benchmark future research in Arabic check courtesy amount recognition.
从银行支票中识别礼貌金额是模式识别的一个重要应用。尽管在孤立数字识别方面已经取得了很大进展,但在使用印度数字识别阿拉伯支票的礼貌金额方面,文献中没有报道过相关工作。阿拉伯支票礼貌金额识别带来了其独特的挑战,这些挑战在孤立数字识别任务中是不存在的,因此需要采用特定的方法来应对。本文提出了一种从支票图像作为输入开始,将金额识别为数字序列的端到端系统,用于礼貌金额识别。该系统是一种混合系统,结合了基于规则的模块和机器学习模块。对于金额识别系统,我们研究并比较了基于分割和无分割的方法。我们在 CENPARMI 数据集上评估了我们的系统,该数据集包含真实的阿拉伯银行支票。在由 626 张支票图像组成的测试集中,我们在金额级别上达到了 67.4%的准确率,在数字级别上达到了 87.15%的准确率。我们给出了详细的分析结果,并确定了一些可能的未来工作。这项工作可以作为基准,用于未来阿拉伯支票礼貌金额识别的研究。