Invoice Information Extraction: Methods and Performance Evaluation
By: Sai Yashwant , Anurag Dubey , Praneeth Paikray and more
Potential Business Impact:
Reads important info from bills automatically.
This paper presents methods for extracting structured information from invoice documents and proposes a set of evaluation metrics (EM) to assess the accuracy of the extracted data against annotated ground truth. The approach involves pre-processing scanned or digital invoices, applying Docling and LlamaCloud Services to identify and extract key fields such as invoice number, date, total amount, and vendor details. To ensure the reliability of the extraction process, we establish a robust evaluation framework comprising field-level precision, consistency check failures, and exact match accuracy. The proposed metrics provide a standardized way to compare different extraction methods and highlight strengths and weaknesses in field-specific performance.
Similar Papers
Invoice Information Extraction: Methods and Performance Evaluation
Artificial Intelligence
Reads bills and finds important money details.
An Efficient Deep Learning-Based Approach to Automating Invoice Document Validation
CV and Pattern Recognition
Checks bills automatically, even messy ones.
Generating Synthetic Invoices via Layout-Preserving Content Replacement
CV and Pattern Recognition
Creates fake invoices for training AI.