A large number of documents — including technical documentation, historical records, academic publications, and legal files — exist in scanned or image formats. This presents significant challenges for downstream tasks like Retrieval-Augmented Generation (RAG), information extraction, and document understanding.
Document parsing addresses these challenges by identifying and extracting various elements like text, equations, tables, and images from diverse documents while preserving their structural relationships. The extracted content is then converted into structured formats such as Markdown, HTML, or JSON, enabling seamless integration with downstream tasks.
In previous articles, we have shared numerous technologies related to intelligent document parsing. This article reviews and summarizes these technologies from my previous writings and two novel surveys, concluding with my personal thoughts and insights.
Keep reading with a 7-day free trial
Subscribe to AI Exploration Journey to keep reading this post and get 7 days of free access to the full post archives.