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  1. International Journal of Machine Learning and Cybernetics
  2. International Journal of Machine Learning and Cybernetics : Volume 8
  3. International Journal of Machine Learning and Cybernetics : Volume 8, Issue 2, April 2017
  4. Hybrid ABC-ANN for pavement surface distress detection and classification
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International Journal of Machine Learning and Cybernetics : Volume 8
International Journal of Machine Learning and Cybernetics : Volume 8, Issue 6, December 2017
International Journal of Machine Learning and Cybernetics : Volume 8, Issue 5, October 2017
International Journal of Machine Learning and Cybernetics : Volume 8, Issue 4, August 2017
International Journal of Machine Learning and Cybernetics : Volume 8, Issue 3, June 2017
International Journal of Machine Learning and Cybernetics : Volume 8, Issue 2, April 2017
A robust and efficient image watermarking scheme based on Lagrangian SVR and lifting wavelet transform
A brief review of modeling approaches based on fuzzy time series
Semi-supervised clustering for gene-expression data in multiobjective optimization framework
TDUP: an approach to incremental mining of frequent itemsets with three-way-decision pattern updating
Efficiently detecting overlapping communities using seeding and semi-supervised learning
Online UAV path planning in uncertain and hostile environments
Some studies on properties of hesitant fuzzy sets
Improved student dropout prediction in Thai University using ensemble of mixed-type data clusterings
Robust stability and $$H_{\infty}$$ filter design for neutral stochastic neural networks with parameter uncertainties and time-varying delay
A new soft union set: characterizations of hemirings
On the structure of metric spaces related to pre-rough logic
Some intuitionistic trapezoidal fuzzy aggregation operators based on Einstein operations and their application in multiple attribute group decision making
Sequential conditional entropy maximization semi-supervised hashing for semantic image retrieval
Unsupervised extreme learning machine with representational features
Multi-criteria group decision making method based on generalized intuitionistic trapezoidal fuzzy prioritized aggregation operators
Reconstructing images corrupted by noise based on D–S evidence theory
H $_{∞}$ control via state observer feedback for the T–S fuzzy singular system
Concept granular computing systems and their approximation operators
Representative points clustering algorithm based on density factor and relevant degree
Grey stochastic multi-criteria decision-making based on regret theory and TOPSIS
Interval-valued neutrosophic soft sets and its decision making
Content based approach to find the credibility of user in social networks: an application of cyberbullying
A hybrid artificial bee colony algorithm for the cooperative maximum covering location problem
Hybrid ABC-ANN for pavement surface distress detection and classification
Parameter reductions of soft equivalence relations
International Journal of Machine Learning and Cybernetics : Volume 8, Issue 1, February 2017
International Journal of Machine Learning and Cybernetics : Volume 7
International Journal of Machine Learning and Cybernetics : Volume 6
International Journal of Machine Learning and Cybernetics : Volume 5
International Journal of Machine Learning and Cybernetics : Volume 4
International Journal of Machine Learning and Cybernetics : Volume 3
International Journal of Machine Learning and Cybernetics : Volume 2
International Journal of Machine Learning and Cybernetics : Volume 1

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Hybrid ABC-ANN for pavement surface distress detection and classification

Content Provider Springer Nature Link
Author Banharnsakun, Anan
Copyright Year 2015
Abstract Pavement condition assessment plays an important role in the process of road maintenance and rehabilitation. However, the traditional road inspection procedure is mostly performed manually, which is labor-intensive and time-consuming. The development of automated detection and classification of distress on the pavement surface system is thus necessary. In this paper, a pavement surface distress detection and classification system using a hybrid between the artificial bee colony (ABC) algorithm and an artificial neural network (ANN), called “ABC-ANN”, is proposed. In the proposed method, first, after the pavement image is captured, it will be segmented into distressed and non-distressed regions based on a thresholding method. The optimal threshold value used for segmentation in this step will be obtained from the ABC algorithm. Next, the features, including the vertical distress measure, the horizontal distress measure, and the total number of distress pixels, are extracted from a distressed region and used to provide the input to the ANN. Finally, based on these input features, the ANN will be employed to classify an area of distress as a specific type of distress, which includes transversal crack, longitudinal crack, and pothole. The experimental results demonstrate that the proposed approach works well for pavement distress detection and can classify distress types in pavement images with reasonable accuracy. The accuracy obtained by the proposed ABC-ANN method achieves 20 % increase compared with existing algorithms.
Starting Page 699
Ending Page 710
Page Count 12
File Format PDF
ISSN 18688071
Journal International Journal of Machine Learning and Cybernetics
Volume Number 8
Issue Number 2
e-ISSN 1868808X
Language English
Publisher Springer Berlin Heidelberg
Publisher Date 2015-12-09
Publisher Place Berlin, Heidelberg
Access Restriction One Nation One Subscription (ONOS)
Subject Keyword Pavement surface distress detection and classification Image segmentation Optimal threshold selection Maximization of entropy energy Artificial bee colony Artificial neural network Computational Intelligence Artificial Intelligence (incl. Robotics) Control, Robotics, Mechatronics Complex Systems Systems Biology Pattern Recognition
Content Type Text
Resource Type Article
Subject Artificial Intelligence Computer Vision and Pattern Recognition Software
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