Analysis of Application of Cluster Descriptions in Space of Characteristic Image Features
In this paper, we propose an investigation of the properties of structural image recognition methods in the cluster space of characteristic features. Recognition, which is based on key point descriptors like SIFT (Scale-invariant Feature Transform), SURF (Speeded Up Robust Features), ORB (Oriented F...
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doaj-d3b4d3a7428d494e849593d620a8d1d12020-11-24T23:20:36ZengMDPI AGData2306-57292018-11-01345210.3390/data3040052data3040052Analysis of Application of Cluster Descriptions in Space of Characteristic Image FeaturesOleksii Gorokhovatskyi0Volodymyr Gorokhovatskyi1Olena Peredrii2Department of Informatics and Computer Technologies, Simon Kuznets Kharkiv National University of Economics, Nauky ave. 9-A, 61166 Kharkiv, UkraineDepartment of Informatics, Kharkiv National University of Radio Electronics, Nauky ave. 14, 61166 Kharkiv, UkraineDepartment of Informatics and Computer Technologies, Simon Kuznets Kharkiv National University of Economics, Nauky ave. 9-A, 61166 Kharkiv, UkraineIn this paper, we propose an investigation of the properties of structural image recognition methods in the cluster space of characteristic features. Recognition, which is based on key point descriptors like SIFT (Scale-invariant Feature Transform), SURF (Speeded Up Robust Features), ORB (Oriented FAST and Rotated BRIEF), etc., often relating to the search for corresponding descriptor values between an input image and all etalon images, which require many operations and time. Recognition of the previously quantized (clustered) sets of descriptor features is described. Clustering is performed across the complete set of etalon image descriptors and followed by screening, which allows for representation of each etalon image in vector form as a distribution of clusters. Due to such representations, the number of computation and comparison procedures, which are the core of the recognition process, might be reduced tens of times. Respectively, the preprocessing stage takes additional time for clustering. The implementation of the proposed approach was tested on the Leeds Butterfly dataset. The dependence of cluster amount on recognition performance and processing time was investigated. It was proven that recognition may be performed up to nine times faster with only a moderate decrease in quality recognition compared to searching for correspondences between all existing descriptors in etalon images and input one without quantization.https://www.mdpi.com/2306-5729/3/4/52computer visionstructural recognition methodsset of characteristic featuresdescriptorquantizationclusteringcompetitive learningrecognition performancerecognition accuracy |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Oleksii Gorokhovatskyi Volodymyr Gorokhovatskyi Olena Peredrii |
spellingShingle |
Oleksii Gorokhovatskyi Volodymyr Gorokhovatskyi Olena Peredrii Analysis of Application of Cluster Descriptions in Space of Characteristic Image Features Data computer vision structural recognition methods set of characteristic features descriptor quantization clustering competitive learning recognition performance recognition accuracy |
author_facet |
Oleksii Gorokhovatskyi Volodymyr Gorokhovatskyi Olena Peredrii |
author_sort |
Oleksii Gorokhovatskyi |
title |
Analysis of Application of Cluster Descriptions in Space of Characteristic Image Features |
title_short |
Analysis of Application of Cluster Descriptions in Space of Characteristic Image Features |
title_full |
Analysis of Application of Cluster Descriptions in Space of Characteristic Image Features |
title_fullStr |
Analysis of Application of Cluster Descriptions in Space of Characteristic Image Features |
title_full_unstemmed |
Analysis of Application of Cluster Descriptions in Space of Characteristic Image Features |
title_sort |
analysis of application of cluster descriptions in space of characteristic image features |
publisher |
MDPI AG |
series |
Data |
issn |
2306-5729 |
publishDate |
2018-11-01 |
description |
In this paper, we propose an investigation of the properties of structural image recognition methods in the cluster space of characteristic features. Recognition, which is based on key point descriptors like SIFT (Scale-invariant Feature Transform), SURF (Speeded Up Robust Features), ORB (Oriented FAST and Rotated BRIEF), etc., often relating to the search for corresponding descriptor values between an input image and all etalon images, which require many operations and time. Recognition of the previously quantized (clustered) sets of descriptor features is described. Clustering is performed across the complete set of etalon image descriptors and followed by screening, which allows for representation of each etalon image in vector form as a distribution of clusters. Due to such representations, the number of computation and comparison procedures, which are the core of the recognition process, might be reduced tens of times. Respectively, the preprocessing stage takes additional time for clustering. The implementation of the proposed approach was tested on the Leeds Butterfly dataset. The dependence of cluster amount on recognition performance and processing time was investigated. It was proven that recognition may be performed up to nine times faster with only a moderate decrease in quality recognition compared to searching for correspondences between all existing descriptors in etalon images and input one without quantization. |
topic |
computer vision structural recognition methods set of characteristic features descriptor quantization clustering competitive learning recognition performance recognition accuracy |
url |
https://www.mdpi.com/2306-5729/3/4/52 |
work_keys_str_mv |
AT oleksiigorokhovatskyi analysisofapplicationofclusterdescriptionsinspaceofcharacteristicimagefeatures AT volodymyrgorokhovatskyi analysisofapplicationofclusterdescriptionsinspaceofcharacteristicimagefeatures AT olenaperedrii analysisofapplicationofclusterdescriptionsinspaceofcharacteristicimagefeatures |
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1725574236169306112 |