Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

A face recognition algorithm based on the combine of image feature compensation and improved PSO

View through CrossRef
AbstractFace recognition systems have been widely applied in various scenarios in people's daily lives. The recognition rate and speed of face recognition systems have always been the two key technical factors that researchers focus on. Many excellent recognition algorithms achieve high recognition rates or good recognition speeds. However, more research is needed to develop algorithms that can effectively balance these two indicators. In this study, we introduce an improved particle swarm optimization algorithm into a face recognition algorithm based on image feature compensation techniques. This allows the system to achieve high recognition rates while simultaneously enhancing the recognition efficiency, aiming to strike a balance between the two aspects. This approach provides a new perspective for the application of image feature compensation techniques in face recognition systems. It helps achieve a broader range of applications for face recognition technology by reducing the recognition speed as much as possible while maintaining a satisfactory recognition rate. Ultimately, this leads to an improved user experience.
Springer Science and Business Media LLC
Title: A face recognition algorithm based on the combine of image feature compensation and improved PSO
Description:
AbstractFace recognition systems have been widely applied in various scenarios in people's daily lives.
The recognition rate and speed of face recognition systems have always been the two key technical factors that researchers focus on.
Many excellent recognition algorithms achieve high recognition rates or good recognition speeds.
However, more research is needed to develop algorithms that can effectively balance these two indicators.
In this study, we introduce an improved particle swarm optimization algorithm into a face recognition algorithm based on image feature compensation techniques.
This allows the system to achieve high recognition rates while simultaneously enhancing the recognition efficiency, aiming to strike a balance between the two aspects.
This approach provides a new perspective for the application of image feature compensation techniques in face recognition systems.
It helps achieve a broader range of applications for face recognition technology by reducing the recognition speed as much as possible while maintaining a satisfactory recognition rate.
Ultimately, this leads to an improved user experience.

Related Results

Intelligent Object Avoidance Method Design of Railroad Inspection Robot Based on Particle Swarm Algorithm
Intelligent Object Avoidance Method Design of Railroad Inspection Robot Based on Particle Swarm Algorithm
<p>In order to make the railroad inspection robot better adapt to its complex working environment, it is especially important to study the robot object avoidance algorithm. T...
Abstract 14986: A Randomized Trial of Statins to Reduce Vascular Endothelial Inflammation in Psoriasis
Abstract 14986: A Randomized Trial of Statins to Reduce Vascular Endothelial Inflammation in Psoriasis
Introduction: Psoriasis (PsO) is a chronic skin disease associated with increased CV risk. Systemic and vascular endothelial inflammation in PsO is highly prevalent and...
P107 Gastrointestinal symptoms in US patients with moderate-severe psoriasis and psoriatic arthritis
P107 Gastrointestinal symptoms in US patients with moderate-severe psoriasis and psoriatic arthritis
BACKGROUND: In patients with psoriasis (PsO), increasing severity and the presence of psoriatic arthritis (PsA) elevate the risk of developing inflammatory bowel diseas...
Depth-aware salient object segmentation
Depth-aware salient object segmentation
Object segmentation is an important task which is widely employed in many computer vision applications such as object detection, tracking, recognition, and ret...
Particle Swarm Optimisation for Edge Detection in Noisy Images
Particle Swarm Optimisation for Edge Detection in Noisy Images
<p>Detection of continuous and connected edges is very important in many applications, such as detecting oil slicks in remote sensing and detecting cancers in medical images....
Sparse Based Particle Swarm Optimization Algorithm
Sparse Based Particle Swarm Optimization Algorithm
Abstract Particle Swarm Optimization (PSO) is the well-known metaheuristic algorithm for optimization, inspired from swarm of species.PSO can be used in various problems so...
Comparison of swarm intelligence algorithms for optimized band selection of hyperspectral remote sensing image
Comparison of swarm intelligence algorithms for optimized band selection of hyperspectral remote sensing image
AbstractSwarm intelligence algorithms have been widely used in the dimensional reduction of hyperspectral remote sensing imagery. The ant colony algorithm (ACA), the clone selectio...
Identification of circulating microRNA patterns in patients in psoriasis and psoriatic arthritis
Identification of circulating microRNA patterns in patients in psoriasis and psoriatic arthritis
Abstract Objective miRNAs are small non-coding RNAs that control gene expression. Specific intra- and extracellular miRNA signat...

Back to Top