Vol. 3 No. 1 (2023): Journal of AI-Assisted Scientific Discovery
Articles

AI/ML-Based Entity Recognition from Images for Parsing Information from US Driver's Licenses and Paychecks

Amsa Selvaraj
Amtech Analytics, USA
Priya Ranjan Parida
Universal Music Group, USA
Chandan Jnana Murthy
Amtech Analytics, Canada
Cover

Published 02-05-2023

Keywords

  • AI,
  • machine learning

How to Cite

[1]
Amsa Selvaraj, Priya Ranjan Parida, and Chandan Jnana Murthy, “AI/ML-Based Entity Recognition from Images for Parsing Information from US Driver’s Licenses and Paychecks”, Journal of AI-Assisted Scientific Discovery, vol. 3, no. 1, pp. 475–515, May 2023, Accessed: Nov. 25, 2024. [Online]. Available: https://scienceacadpress.com/index.php/jaasd/article/view/137

Abstract

Entity recognition from images, particularly from documents such as US driver's licenses and paychecks, is a burgeoning area of research in artificial intelligence (AI) and machine learning (ML). This paper provides a comprehensive analysis of current AI/ML methodologies employed for extracting structured information from such documents. The focus is on evaluating various image processing techniques, feature extraction methodologies, and recognition algorithms that facilitate accurate data parsing from these specific types of documents.

US driver's licenses and paychecks, while serving distinct purposes, share common characteristics that pose unique challenges for automated recognition systems. Driver's licenses often contain a variety of alphanumeric characters, barcode data, and different types of security features, while paychecks include textual and numeric information related to employment and financial transactions. Both types of documents require sophisticated techniques to handle variations in text placement, format, and the potential presence of distortions and noise.

The study begins with a review of fundamental image preprocessing techniques, including noise reduction, normalization, and image enhancement. It delves into feature extraction methods such as histogram of oriented gradients (HOG), scale-invariant feature transform (SIFT), and convolutional neural networks (CNNs), which are pivotal for distinguishing relevant information from background noise.

In the realm of entity recognition, optical character recognition (OCR) remains a cornerstone technology. However, advancements in deep learning have led to the development of more robust methods. This paper discusses the application of recurrent neural networks (RNNs), long short-term memory networks (LSTMs), and transformer models in parsing textual data from images. These models are evaluated for their efficacy in handling the variability and complexity inherent in documents like driver's licenses and paychecks.

Furthermore, the integration of domain-specific knowledge into entity recognition systems is examined. Techniques such as rule-based post-processing and contextual analysis enhance the precision of data extraction by incorporating knowledge about the format and expected values of specific fields. The paper also explores the role of synthetic data generation in training models, addressing the challenge of acquiring labeled datasets for diverse document types.

Case studies are presented to illustrate the practical application of these methodologies. One case study focuses on the use of deep learning models for parsing US driver's licenses, highlighting the effectiveness of attention mechanisms and data augmentation techniques in improving recognition accuracy. Another case study examines paycheck parsing, emphasizing the challenges of extracting numeric data and verifying its accuracy against predefined criteria.

Performance metrics and evaluation criteria are discussed to provide a quantitative assessment of the various methods. Precision, recall, F1 score, and the impact of different preprocessing and feature extraction techniques are analyzed to gauge the effectiveness of each approach. The discussion includes an evaluation of computational efficiency and scalability, which are crucial for deploying these systems in real-world applications.

The paper concludes with a discussion of future research directions. It suggests exploring the integration of multimodal approaches that combine visual and textual information, enhancing the robustness of recognition systems. Additionally, advancements in transfer learning and few-shot learning are proposed as potential avenues for improving model performance with limited labeled data.

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