about
Early detection of Alzheimer's disease using MRI hippocampal textureUnsupervised Deep Learning Applied to Breast Density Segmentation and Mammographic Risk ScoringCovariance matrix adaptation for multi-objective optimizationToward registration of 3D ultrasound and CT images of the spine in clinical praxis: design and evaluation of a data acquisition protocol.A dynamic neural field model of mesoscopic cortical activity captured with voltage-sensitive dye imaging.Separating Timing, Movement Conditions and Individual Differences in the Analysis of Human Movement.Differential diagnosis of mild cognitive impairment and Alzheimer's disease using structural MRI cortical thickness, hippocampal shape, hippocampal texture, and volumetryFemoral cartilage segmentation in knee MRI scans using two stage voxel classification.CMA-ES with Optimal Covariance Update and Storage ComplexityRobust Active Label CorrectionCross-reactive metal ion sensor array in a micro titer plate format.Population-Contrastive-Divergence: Does consistency help with RBM training?Bounding the bias of contrastive divergence learning.Evolutionary optimization of sequence kernels for detection of bacterial gene starts.Second-order SMO improves SVM online and active learning.Reducing the number of fitness evaluations in graph genetic programming using a canonical graph indexed database.Gradient-based optimization of kernel-target alignment for sequence kernels applied to bacterial gene start detection.Gradient-based adaptation of general gaussian kernels.On classes of functions for which No Free Lunch results holdTraining restricted Boltzmann machines: An introductionVALIDATION OF HIPPOCAMPAL TEXTURE FOR EARLY ALZHEIMER'S DISEASE DETECTION: GENERALIZATION TO INDEPENDENT COHORTS AND EXTRAPOLATION TO VERY EARLY SIGNS OF DEMENTIAMCI TRIAL ENRICHMENT USING MRI HIPPOCAMPUS TEXTUREMCI TRIAL ENRICHMENT USING MRI HIPPOCAMPUS TEXTUREHippocampal MRI texture is related to hippocampal glucose metabolismHippocampal MRI texture is related to hippocampal glucose metabolismHippocampal texture predicts conversion from MCI to Alzheimer's diseaseHippocampal texture predicts conversion from MCI to Alzheimer’s diseaseNearest neighbour regression outperforms model-based prediction of specific star formation rateShape Index Descriptors Applied to Texture-Based Galaxy AnalysisAutomatic FDG-PET-based tumor and metastatic lymph node segmentation in cervical cancerTowards exaggerated image stereotypesMaximum likelihood model selection for 1-norm soft margin SVMs with multiple parametersU-Time: A Fully Convolutional Network for Time Series Segmentation Applied to Sleep StagingAlgorithms for estimating the partition function of restricted Boltzmann machines
P50
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P50
description
forsker
@da
onderzoeker
@nl
researcher, machine learning, University of Copenhagen
@en
հետազոտող
@hy
name
Christian Igel
@ast
Christian Igel
@da
Christian Igel
@de
Christian Igel
@en
Christian Igel
@es
Christian Igel
@fo
Christian Igel
@fr
Christian Igel
@is
Christian Igel
@kl
Christian Igel
@nb
type
label
Christian Igel
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Christian Igel
@da
Christian Igel
@de
Christian Igel
@en
Christian Igel
@es
Christian Igel
@fo
Christian Igel
@fr
Christian Igel
@is
Christian Igel
@kl
Christian Igel
@nb
prefLabel
Christian Igel
@ast
Christian Igel
@da
Christian Igel
@de
Christian Igel
@en
Christian Igel
@es
Christian Igel
@fo
Christian Igel
@fr
Christian Igel
@is
Christian Igel
@kl
Christian Igel
@nb
P214
P227
P101
P1053
B-4091-2009
P1153
6602116076
P1960
d-jF4zIAAAAJ
P21
P214
P227
P31
P3829
P39
P496
0000-0003-2868-0856
P569
2000-01-01T00:00:00Z
P735
P7748
christian-igel-9101
P7859
viaf-160701693