The multiple signal classification algorithm (MUSICAL) is a statistical super-resolution technique for wide-field fluorescence microscopy. Although MUSICAL has several advantages, such as its high resolution, its low computational performance has limited its exploitation. This paper aims to analyze the performance and scalability of MUSICAL for improving its low computational performance. We first optimize MUSICAL for performance analysis by using the latest high-performance computing libraries and parallel programming techniques. Thereafter, we provide insights into MUSICAL’s performance bottlenecks. Based on the insights, we develop a new parallel MUSICAL in CCC using Intel Threading Building Blocks and the Intel Math Kernel Library. Our ...
This paper proposes and evaluates a parallel strategy to execute the exact Smith-Waterman (SW) algor...
Fluorescence lifetime imaging microscopy (FLIM) plays a significant role in biological sciences, che...
Parallelism patterns (e.g., map or reduce) have proven to be effective tools for parallelizing high-...
The multiple signal classification algorithm (MUSICAL) is a statistical super-resolution technique f...
The multiple signal classification algorithm (MUSICAL) is a statistical super-resolution technique f...
Multiple signal classification algorithm (MUSICAL) provides a super-resolution microscopy method. In...
Multiple signal classification algorithm (MUSICAL) exploits temporal fluctuations in fluorescence in...
Both the brain and modern digital architectures rely on massive parallelismfor efficient solutions t...
The widespread emergence of parallel computers in the last decade has created a substantial programm...
This paper parallelizes and characterizes an important computer vision application — Scale Invariant...
Localization microscopy and multiple signal classification algorithm use temporal stack of image fra...
Highly multiplexed, single-cell imaging has revolutionized our understanding of spatial cellular int...
The exponential growth of databases that contains biological information (such as protein and DNA da...
We present a fast, accurate and robust parallel Levenberg-Marquardt minimization optimizer, GPU-LMFi...
<div><p>We present a fast, accurate and robust parallel Levenberg-Marquardt minimization optimizer, ...
This paper proposes and evaluates a parallel strategy to execute the exact Smith-Waterman (SW) algor...
Fluorescence lifetime imaging microscopy (FLIM) plays a significant role in biological sciences, che...
Parallelism patterns (e.g., map or reduce) have proven to be effective tools for parallelizing high-...
The multiple signal classification algorithm (MUSICAL) is a statistical super-resolution technique f...
The multiple signal classification algorithm (MUSICAL) is a statistical super-resolution technique f...
Multiple signal classification algorithm (MUSICAL) provides a super-resolution microscopy method. In...
Multiple signal classification algorithm (MUSICAL) exploits temporal fluctuations in fluorescence in...
Both the brain and modern digital architectures rely on massive parallelismfor efficient solutions t...
The widespread emergence of parallel computers in the last decade has created a substantial programm...
This paper parallelizes and characterizes an important computer vision application — Scale Invariant...
Localization microscopy and multiple signal classification algorithm use temporal stack of image fra...
Highly multiplexed, single-cell imaging has revolutionized our understanding of spatial cellular int...
The exponential growth of databases that contains biological information (such as protein and DNA da...
We present a fast, accurate and robust parallel Levenberg-Marquardt minimization optimizer, GPU-LMFi...
<div><p>We present a fast, accurate and robust parallel Levenberg-Marquardt minimization optimizer, ...
This paper proposes and evaluates a parallel strategy to execute the exact Smith-Waterman (SW) algor...
Fluorescence lifetime imaging microscopy (FLIM) plays a significant role in biological sciences, che...
Parallelism patterns (e.g., map or reduce) have proven to be effective tools for parallelizing high-...