Digitize-PID: Automatic Digitization of Piping and Instrumentation Diagrams
Shubham Paliwal, Arushi Jain, Monika Sharma, Lovekesh Vig

TL;DR
Digitize-PID is an end-to-end system that automates the digitization of P&ID diagrams using advanced image processing and deep learning, significantly improving accuracy and efficiency over manual methods.
Contribution
The paper introduces a novel pipeline with kernel-based line detection and a two-step symbol recognition method, along with a new synthetic dataset for P&ID digitization.
Findings
Outperforms existing state-of-the-art methods
Achieves high accuracy on synthetic and real datasets
Provides a publicly available annotated P&ID dataset
Abstract
Digitization of scanned Piping and Instrumentation diagrams(P&ID), widely used in manufacturing or mechanical industries such as oil and gas over several decades, has become a critical bottleneck in dynamic inventory management and creation of smart P&IDs that are compatible with the latest CAD tools. Historically, P&ID sheets have been manually generated at the design stage, before being scanned and stored as PDFs. Current digitization initiatives involve manual processing and are consequently very time consuming, labour intensive and error-prone.Thanks to advances in image processing, machine and deep learning techniques there are emerging works on P&ID digitization. However, existing solutions face several challenges owing to the variation in the scale, size and noise in the P&IDs, sheer complexity and crowdedness within drawings, domain knowledge required to interpret the drawings.…
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