Follow us...


Search News Archives





View Channel

Laboratory Products



View Channel

Special Offers and Promotions


Microscopy | Image Analysis



View Channel

Separation Science



View Channel

Coronavirus (COVID-19)



View Channel

Research & Case Studies



View Channel

Brochures & Literature



View Channel


Conferences | Events

Artificial Intelligence Facilitates Empty Well Detection

publication date: Jul 14, 2021
author/source: Ziath
Dr. Alexander Beasley with one of the powerful PC boards needed to develop a fast neural network


Ziath reports on ground-breaking use of Artificial Intelligence that enables discrimination between empty wells in sample tube racks from wells with a tube present which may have an obscured or poorly rendered barcode.

This pioneering work, done in conjunction with the University of Hertfordshire (UK), is part of a program of development for the next generation of Ziath barcoded tube scanners due to launch around the end of 2021.

DataMatrix barcodes play a key role in tracking and tracing both biological and compound samples. These barcodes are usually laser-etched onto the underside of sample tubes, and the tubes are then stored in racks. Tube identification using a barcode reader that scans the bottom of the rack and decodes all the barcodes in one go has recognised issues with correctly identifying which location has a tube and which is an “empty well”.

Ambient lighting, background image noise, variation in barcode lasering and material quality all contribute to detection difficulties using traditional machine vision techniques. To further improve sample tracking and tracing – the next generation of tube scanners and readers must be able to genuinely discriminate between empty wells and wells with a tube present which may have an obscured or poorly rendered barcode.

Dr. Alexander Beasley, from the University of Hertfordshire, is an expert embedded systems design engineer with experience in machine learning. Working closely with Ziath, Dr. Beasley has used a Convolutional Neural Network (CNN) technique for feature extraction of images from a Ziath camera-based barcode reader. In this developmental project he has taken the notion of the CNN and applied it specifically to discriminating empty wells from full wells in DataMatrix-barcoded tube racks.

Dr Beasley commented “The CNN I have chosen is designed to be very lightweight allowing for quick execution. When compared to the pre-existing heuristic methods, the CNN approach was almost ten times faster to execute with virtually 100% accuracy.”

Ziath has implemented the new Empty Well Detection feature in the latest version of its popular DP5 control software to give customers the full benefit of the new technology immediately.

Neil Benn, Managing Director of Ziath, said “This is just the first deliverable from our collaboration with Alexander and the University of Hertfordshire team. We are expecting this project to revolutionise the way we decode DataMatrix tubes and help us produce the next generation of faster, lighter, go-anywhere tube rack readers. It’s an exciting development that will, very soon, improve sample tracking and tracing for scientists everywhere.”


Learn more



About Ziath

Founded in 2005, Ziath specialises in development of innovative instrumentation control and information management products using 2D Data Matrix bar-coded tubes to simplify automation processes in life science organisations, from academia, to the biotech and pharma industries.


Recent news from Ziath



If you have not logged into the website then please enter your details below.


Subscribe to any of our newsletters for the latest on new laboratory products, industry news, case studies and much more!

Newsletters from Lab Bulletin


Request your free copies HERE




Popular this Month...

Our Top 10 most popular articles this month


Today's Picks...




Looking for a Supplier?

Search by company or by product


Company Name:






Please note Lab Bulletin does not sell, supply any of the products featured on this website. If you have an enquiry, please use the contact form below the article or company profile and we will send your request to the supplier so that they can contact you directly.

Lab Bulletin is published by newleaf marketing communications ltd.


Media Partners