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University of Groningen Brain-inspired computer vision with applications to pattern recognition and computer-aided diagnosis of glaucoma Guo, Jiapan

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University of Groningen

Brain-inspired computer vision with applications to pattern recognition and computer-aided

diagnosis of glaucoma

Guo, Jiapan

IMPORTANT NOTE: You are advised to consult the publisher's version (publisher's PDF) if you wish to cite from

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Publication date:

2017

Link to publication in University of Groningen/UMCG research database

Citation for published version (APA):

Guo, J. (2017). Brain-inspired computer vision with applications to pattern recognition and computer-aided

diagnosis of glaucoma. University of Groningen.

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Research Activities

Journal Papers

• Jiapan Guo, Chenyu Shi, George Azzopardi, Nomdo M. Jansonius and Nicolai Petkov, Automatic analysis of retinal fundus images for glaucoma screening based on vertical cup-to-disc ratio, submitted.

• Jiapan Guo, Chenyu Shi, George Azzopardi and Nicolai Petkov, Inhibition-augmented COSFIRE model of shape-selective neurons, IBM journal special issue on Computational Neuroscience, Volume 61, Issue 2, pages 10:1-10:9, 2017.

• Jiapan Guo, Chenyu Shi, George Azzopardi and Nicolai Petkov, Inhibition-augmented trainable COSFIRE filters for keypoint detection and object recognition, Machine Vision and Applications, Volume 27, Issue 8, pages 1197-1211, 2016.

Conference Proceedings

• Jiapan Guo, Chenyu Shi, George Azzopardi, and Nicolai Petkov, Recognition of archi-tectural and electrical symbols by COSFIRE filters with inhibition, In Computer Analysis of Images and Patterns, volume 9257 of Lecture Notes in Computer Science, pages 348-358. Springer International Publishing, 2015.

• Chenyu Shi, Jiapan Guo, George Azzopardi, Joost M. Meijer, Marcel F. Jonkman, and Nicolai Petkov, Automatic differentiation of u- and n-serrated patterns in direct immunoflu-orescence images, In Computer Analysis of Images and Patterns (CAIP 2015), volume 9256 of Lecture Notes in Computer Science, pages 513-521, 2015.

• Chenyu Shi, Joost M. Meijer, Jiapan Guo, George Azzopardi, Marcel F. Jonkman, and Nicolai Petkov. Automatic classification of serrated patterns in direct immunofluorescence images, In 8th GI Conference on Autonomous Systems, volume 842, pages 61-69, 2015. • Jiapan Guo, Chenyu Shi, Nomdo M. Jansonius, and Nicolai Petkov. Automatic Optic

Disk Localization and Diameter Estimation in Retinal Fundus Images, In 8th GI Conference on Autonomous Systems, volume 842, pages 70-79, 2015.

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Attended Conferences and workshops

• 1st Cognitive Computing on Medicine (COCOMED), Las palmas Gran Canaria, Spain, 2017

• 8th GI Conference on Autonomous Systems, Cala Millor Majorca, Spain, 2015

• 16th International Conference on Computer Analysis of Images and Patterns (CAIP), Valletta, Malta

Summer Schools

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