ASALTAG : Automatic Image Annotation Through Salient Object Detection and Improved k-Nearest Neighbor Feature Matching

Image databases are becoming very large nowadays, and there is an increasing need for automatic image annotation, for assiting on finding the desired specific image. In this paper, we present a new approach of automatic image annotation using salient object detection and improved k-Nearest Neigbor c...

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Main Authors: Theresia Hendrawati, Duman Care Khrisne
Format: Article
Language:English
Published: Universitas Udayana 2018-02-01
Series:Journal of Electrical, Electronics and Informatics
Online Access:https://ojs.unud.ac.id/index.php/JEEI/article/view/40655
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spelling doaj-bd5f298c97f0400f9b03232644ee66002020-11-25T02:15:39ZengUniversitas UdayanaJournal of Electrical, Electronics and Informatics2549-83042622-03932018-02-012161010.24843/JEEI.2018.v02.i01.p0240655ASALTAG : Automatic Image Annotation Through Salient Object Detection and Improved k-Nearest Neighbor Feature MatchingTheresia Hendrawati0Duman Care Khrisne1Computer Science Graduate Program Ganesha University of Education (UNDIKSHA) Singaraja, Bali, IndonesiaElectrical Engineering Department, Faculty of Engineering Udayana University (UNUD) Badung, Bali, IndonesiaImage databases are becoming very large nowadays, and there is an increasing need for automatic image annotation, for assiting on finding the desired specific image. In this paper, we present a new approach of automatic image annotation using salient object detection and improved k-Nearest Neigbor classifier named ASALTAG. ASALTAG is consist of three major part, the segmentation using Minimum Barirer Salienct Region Segmentation, feature extraction using Block Truncation Algorithm, Gray Level Co-occurrence Matrix and Hu’ Moments, the last part is classification using improved k-Nearest Neigbor. As the result we get maximum accuracy of 79.56% with k=5, better than earlier research. It is because the saliency object detection we do before the feature extraction proccess give us more focused object in image to annotate. Normalization of the feature vector and the distance measure that we use in ASALTAG also improve the kNN classifier accuracy for labeling image.https://ojs.unud.ac.id/index.php/JEEI/article/view/40655
collection DOAJ
language English
format Article
sources DOAJ
author Theresia Hendrawati
Duman Care Khrisne
spellingShingle Theresia Hendrawati
Duman Care Khrisne
ASALTAG : Automatic Image Annotation Through Salient Object Detection and Improved k-Nearest Neighbor Feature Matching
Journal of Electrical, Electronics and Informatics
author_facet Theresia Hendrawati
Duman Care Khrisne
author_sort Theresia Hendrawati
title ASALTAG : Automatic Image Annotation Through Salient Object Detection and Improved k-Nearest Neighbor Feature Matching
title_short ASALTAG : Automatic Image Annotation Through Salient Object Detection and Improved k-Nearest Neighbor Feature Matching
title_full ASALTAG : Automatic Image Annotation Through Salient Object Detection and Improved k-Nearest Neighbor Feature Matching
title_fullStr ASALTAG : Automatic Image Annotation Through Salient Object Detection and Improved k-Nearest Neighbor Feature Matching
title_full_unstemmed ASALTAG : Automatic Image Annotation Through Salient Object Detection and Improved k-Nearest Neighbor Feature Matching
title_sort asaltag : automatic image annotation through salient object detection and improved k-nearest neighbor feature matching
publisher Universitas Udayana
series Journal of Electrical, Electronics and Informatics
issn 2549-8304
2622-0393
publishDate 2018-02-01
description Image databases are becoming very large nowadays, and there is an increasing need for automatic image annotation, for assiting on finding the desired specific image. In this paper, we present a new approach of automatic image annotation using salient object detection and improved k-Nearest Neigbor classifier named ASALTAG. ASALTAG is consist of three major part, the segmentation using Minimum Barirer Salienct Region Segmentation, feature extraction using Block Truncation Algorithm, Gray Level Co-occurrence Matrix and Hu’ Moments, the last part is classification using improved k-Nearest Neigbor. As the result we get maximum accuracy of 79.56% with k=5, better than earlier research. It is because the saliency object detection we do before the feature extraction proccess give us more focused object in image to annotate. Normalization of the feature vector and the distance measure that we use in ASALTAG also improve the kNN classifier accuracy for labeling image.
url https://ojs.unud.ac.id/index.php/JEEI/article/view/40655
work_keys_str_mv AT theresiahendrawati asaltagautomaticimageannotationthroughsalientobjectdetectionandimprovedknearestneighborfeaturematching
AT dumancarekhrisne asaltagautomaticimageannotationthroughsalientobjectdetectionandimprovedknearestneighborfeaturematching
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