Main
News
People
Publications
Projects
Contact
Study AI
Intranet
Mariusz T. Paradowski
Latest
A new F-score gradient-based training rule for the linear model
Hierarchical Gaussian mixture model with objects attached to terminal and non-terminal dendrogram nodes
Image-based logical document structure recognition
On the order equivalence relation of binary association measures
Image similarities on the basis of visual content :an attempt to bridge the semantic gap
Intelligent techniques in personalization of learning in e-learning systems
Machine learning methods in automatic image annotation
A framework for clinical decision support systems - combining knowledge gathered from data, images and experts
Avascular area detection in nailfold capillary images
Capillary abnormalities detection using vessel thickness and curvature analysis
Capillary blood vessel tortuosity measurement using graph analysis
Capillary blood vessel tracking using polar coordinates based model identification
Improved resulted word counts optimizer for automatic image annotation problem
MAGMA :efficient method for image annotation in low dimensional feature space based on Multivariate Gaussian Models
Computer-interactive methods of brain cortical evaluation
Correlation of volumetric and fractal measurements of brain atrophy with neuropsychological tests in patients with dementive disorders
On automation of brain CT image analysis
Resulted word counts optimization - a new approach for better automatic image annotation
Capillaroscopy image analysis as an automatic image annotation problem
Fast image auto-annotation with discretized feature distance measures
Multiple class machine learning approach for an image auto-annotation problem
On evolution of image auto-annotation methods
Efficiency aspects of neural network architecture evolution using direct and indirect encoding
Melanocytic lesion images segmentation enforcing by spatial relations based declarative knowledge
Spread Histogram - a method for calculating spatial relations between objects
Selection pressure and an efficiency of neural network architecture evolving
Cite
×