Image pattern classification is a challenging task due to the large search space of pixel data. Supervised and subsymbolic approaches have proven accurate in learning a problem’s classes. However, in the complex image recognition domain, there is a need for investigation of learning techniques that allow humans to interpret the learned rules in order to gain an insight about the problem. Learning classifier systems (LCSs) are a machine learning technique that have been minimally explored for image classification. This work has developed the feature pattern classification system (FPCS) framework by adopting Haar-like features from the image recognition domain for feature extraction. The FPCS integrates Haar-like features with XCS, which is a...
We consider computer vision issues with a view to embed it into vehicles and automate the traffic pr...
The recent years have seen the increasing popularity of a wide range of applications in Computer Vis...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
Extracting features from images is an important task in order to identify (classify) the patterns co...
Learning Classifier Systems (LCS) have not been widely applied to image recognition tasks due to the...
Image pattern classification in computer vision problems is challenging due to large, sparse input s...
Learning classifier systems (LCSs) are rule-based online evolutionary machine learning techniques th...
Learning Classifier Systems (LCS) are a well-known machine learning method, producing sets of interp...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
In recent years, Deep Artificial Neural Networks (DNNs) have demonstrated their ability in solving v...
This dissertation presents a machine learning system for generating image domain feature detectors. ...
This thesis presents novel techniques for image recognition systems for better understanding image c...
Classifying objects and patterns to a certain category is crucial for both humans and machines, so t...
A common paradigm in object recognition is to extract symbolic and/or numeric features from an image...
Deep learning is a cutting-edge methodology that has been widely used in real-world applications to ...
We consider computer vision issues with a view to embed it into vehicles and automate the traffic pr...
The recent years have seen the increasing popularity of a wide range of applications in Computer Vis...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
Extracting features from images is an important task in order to identify (classify) the patterns co...
Learning Classifier Systems (LCS) have not been widely applied to image recognition tasks due to the...
Image pattern classification in computer vision problems is challenging due to large, sparse input s...
Learning classifier systems (LCSs) are rule-based online evolutionary machine learning techniques th...
Learning Classifier Systems (LCS) are a well-known machine learning method, producing sets of interp...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
In recent years, Deep Artificial Neural Networks (DNNs) have demonstrated their ability in solving v...
This dissertation presents a machine learning system for generating image domain feature detectors. ...
This thesis presents novel techniques for image recognition systems for better understanding image c...
Classifying objects and patterns to a certain category is crucial for both humans and machines, so t...
A common paradigm in object recognition is to extract symbolic and/or numeric features from an image...
Deep learning is a cutting-edge methodology that has been widely used in real-world applications to ...
We consider computer vision issues with a view to embed it into vehicles and automate the traffic pr...
The recent years have seen the increasing popularity of a wide range of applications in Computer Vis...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...