Optimized Successive Mean Quantization Transform
Image processing algorithms are often very resource intensive due to fact that they process pixels on an image one at a time and often requires multiple passes. Successive Mean Quantization Transform (SMQT) is one such resource intensive algorithm that can process images taken in low-light conditions and reveal details from dark regions of the image.
In this article, Toptal engineer Daniel Angel Munoz Trejo gives us some insight into how the SMQT algorithm works and walks us through a clever optimization technique to make the algorithm a viable option for handheld devices.
15 minute readContinue Reading
Daniel Munoz
World-class articles, delivered weekly.
Toptal Developers
- Algorithm Developers
- Angular Developers
- AWS Developers
- Azure Developers
- Big Data Architects
- Blockchain Developers
- Business Intelligence Developers
- C Developers
- Computer Vision Developers
- Django Developers
- Docker Developers
- Elixir Developers
- Go Engineers
- GraphQL Developers
- Jenkins Developers
- Kotlin Developers
- Kubernetes Experts
- Machine Learning Engineers
- Magento Developers
- .NET Developers
- R Developers
- React Native Developers
- Ruby on Rails Developers
- Salesforce Developers
- SQL Developers
- Sys Admins
- Tableau Developers
- Unreal Engine Developers
- Xamarin Developers
- View More Freelance Developers
Join the Toptal® community.