A lensless blood cell counting system integrating microfluidic channel and a complementary metal oxide semiconductor (CMOS) image sensor is a promising technique to miniaturize the conventional optical lens based imaging system for point-of-care testing (POCT). However, such a system has limited resolution, making it imperative to improve resolution from the system-level using super-resolution (SR) processing. Yet, how to improve resolution towards better cell detection and recognition with low cost of processing resources and without degrading system throughput is still a challenge. In this article, two machine learning based single-frame SR processing types are proposed and compared for lensless blood cell counting, namely the Extreme Lea...
Point of care testing has become increasingly popular in recent years, as it provides convenience fo...
In this thesis we present the development of machine learning algorithms for single cell analysis in...
Deep learning has achieved spectacular performance in image and speech recognition and synthesis. It...
A lensless blood cell counting system integrating microfluidic channel and a complementary metal oxi...
In point-of-care testing, in-line holographic microscopes paved the way for realizing portable cell ...
Lensless microfluidic imaging with super-resolution processing has become a promising solution to mi...
The contact-image based microfluidic cytometer with machine-learning for single-frame super-resoluti...
Lensless microfluidic imaging with super-resolution processing has become a promising solution to mi...
With the recent advancement in microfluidics based lab-on-a-chip technology, lensless imaging system...
Automated in-vitro cell detection and counting have been a key theme for artificial and intelligent ...
We show a platform that merges a microfluidic chip with lensless imaging for CD4[superscript +] T-ly...
Advancements in computer vision methodologies and machine learning in the medical domain have played...
Blood cell analysis is an important part of the health and immunity assessment. There are three majo...
We propose a flow cytometry concept that combines a spatial optical modulation scheme and deep learn...
Abstract Providing an accurate count of total leukocytes and specific subsets (such as T-cells and B...
Point of care testing has become increasingly popular in recent years, as it provides convenience fo...
In this thesis we present the development of machine learning algorithms for single cell analysis in...
Deep learning has achieved spectacular performance in image and speech recognition and synthesis. It...
A lensless blood cell counting system integrating microfluidic channel and a complementary metal oxi...
In point-of-care testing, in-line holographic microscopes paved the way for realizing portable cell ...
Lensless microfluidic imaging with super-resolution processing has become a promising solution to mi...
The contact-image based microfluidic cytometer with machine-learning for single-frame super-resoluti...
Lensless microfluidic imaging with super-resolution processing has become a promising solution to mi...
With the recent advancement in microfluidics based lab-on-a-chip technology, lensless imaging system...
Automated in-vitro cell detection and counting have been a key theme for artificial and intelligent ...
We show a platform that merges a microfluidic chip with lensless imaging for CD4[superscript +] T-ly...
Advancements in computer vision methodologies and machine learning in the medical domain have played...
Blood cell analysis is an important part of the health and immunity assessment. There are three majo...
We propose a flow cytometry concept that combines a spatial optical modulation scheme and deep learn...
Abstract Providing an accurate count of total leukocytes and specific subsets (such as T-cells and B...
Point of care testing has become increasingly popular in recent years, as it provides convenience fo...
In this thesis we present the development of machine learning algorithms for single cell analysis in...
Deep learning has achieved spectacular performance in image and speech recognition and synthesis. It...