Integration of new moving object segmentation and classification techniques using optimal salp swarm-based feature fusion with linear multi k-SVM classifier

Abstract The feature extraction technique is applied on least enclosing rectangle (LER) of the segmented object to increase the processing speed. The main intuition of this salp swarm algorithm relays on reducing the computational load of the proposed classifier by removing the repetitive and unrela...

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Main Authors: Jemilda G., Baulkani S.
Format: Article
Language:English
Published: SpringerOpen 2020-05-01
Series:EURASIP Journal on Image and Video Processing
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13640-020-00511-9
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spelling doaj-936f1fefe3a84aceab092f14d24f91e82020-11-25T03:17:53ZengSpringerOpenEURASIP Journal on Image and Video Processing1687-52812020-05-012020111010.1186/s13640-020-00511-9Integration of new moving object segmentation and classification techniques using optimal salp swarm-based feature fusion with linear multi k-SVM classifierJemilda G.0Baulkani S.1Department of Computer Science and Engineering, Jayaraj Annapackiam CSI College of EngineeringDepartment of Electronics and Communication Engineering, Government College of EngineeringAbstract The feature extraction technique is applied on least enclosing rectangle (LER) of the segmented object to increase the processing speed. The main intuition of this salp swarm algorithm relays on reducing the computational load of the proposed classifier by removing the repetitive and unrelated features from the feature vector. Also, increased training samples of similarly shaped classes when applied on the classifier can generate the misclassification results. Thus, a new layered kernel-based support vector machine (k-SVM) classifier is developed by means of integrating the k-neural network classifier and layered SVM classifier. Because of the high dimensional features, a difficulty occurs in the application of a single classifier. In order to ease the computational load, this multi classifier is integrated with a shadow elimination technique to classify the object categories of intelligent transportations system such as motorcycles, bicycles, cars, and pedestrians.http://link.springer.com/article/10.1186/s13640-020-00511-9Image segmentationObject classificationFeature extractionSubtraction techniquesImage detection
collection DOAJ
language English
format Article
sources DOAJ
author Jemilda G.
Baulkani S.
spellingShingle Jemilda G.
Baulkani S.
Integration of new moving object segmentation and classification techniques using optimal salp swarm-based feature fusion with linear multi k-SVM classifier
EURASIP Journal on Image and Video Processing
Image segmentation
Object classification
Feature extraction
Subtraction techniques
Image detection
author_facet Jemilda G.
Baulkani S.
author_sort Jemilda G.
title Integration of new moving object segmentation and classification techniques using optimal salp swarm-based feature fusion with linear multi k-SVM classifier
title_short Integration of new moving object segmentation and classification techniques using optimal salp swarm-based feature fusion with linear multi k-SVM classifier
title_full Integration of new moving object segmentation and classification techniques using optimal salp swarm-based feature fusion with linear multi k-SVM classifier
title_fullStr Integration of new moving object segmentation and classification techniques using optimal salp swarm-based feature fusion with linear multi k-SVM classifier
title_full_unstemmed Integration of new moving object segmentation and classification techniques using optimal salp swarm-based feature fusion with linear multi k-SVM classifier
title_sort integration of new moving object segmentation and classification techniques using optimal salp swarm-based feature fusion with linear multi k-svm classifier
publisher SpringerOpen
series EURASIP Journal on Image and Video Processing
issn 1687-5281
publishDate 2020-05-01
description Abstract The feature extraction technique is applied on least enclosing rectangle (LER) of the segmented object to increase the processing speed. The main intuition of this salp swarm algorithm relays on reducing the computational load of the proposed classifier by removing the repetitive and unrelated features from the feature vector. Also, increased training samples of similarly shaped classes when applied on the classifier can generate the misclassification results. Thus, a new layered kernel-based support vector machine (k-SVM) classifier is developed by means of integrating the k-neural network classifier and layered SVM classifier. Because of the high dimensional features, a difficulty occurs in the application of a single classifier. In order to ease the computational load, this multi classifier is integrated with a shadow elimination technique to classify the object categories of intelligent transportations system such as motorcycles, bicycles, cars, and pedestrians.
topic Image segmentation
Object classification
Feature extraction
Subtraction techniques
Image detection
url http://link.springer.com/article/10.1186/s13640-020-00511-9
work_keys_str_mv AT jemildag integrationofnewmovingobjectsegmentationandclassificationtechniquesusingoptimalsalpswarmbasedfeaturefusionwithlinearmultiksvmclassifier
AT baulkanis integrationofnewmovingobjectsegmentationandclassificationtechniquesusingoptimalsalpswarmbasedfeaturefusionwithlinearmultiksvmclassifier
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