2018
DOI: 10.1016/j.asoc.2017.11.007
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Novel hybrid object-based non-parametric clustering approach for grouping similar objects in specific visual domains

Abstract: Current widely employed clustering approaches may not yield satisfactory results with regard to the characteristics and distribution of datasets and number of clusters to be sought, especially for visual domains in multidimensional space. This study establishes a novel clustering methodology using a pairwise similarity matrix, Clustering Visual Objects in Pairwise Similarity Matrix (CVOIPSM), for grouping similar objects in specific visual domains. A dimensionality reduction and feature extraction technique, a… Show more

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Cited by 13 publications
(5 citation statements)
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References 27 publications
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“…Several approaches such as [46], [47] have been recently developed to make swarms of FAGVs safer and optimised in urban roads using the fusion of data from connected multiple AGVs, i.e., swarm intelligence using the understanding of connected and autonomous vehicles (CAVs) within the concept of Cooperative Intelligent Transportation System (C-ITS). Cui et al [48] investigate the intelligent management of FAGVs within SC from the perspective of BD analytics that can process unstructured BD effectively where most of the BD is in unstructured format [49]. In a recent study, Minh et al [50] emphasise the importance of using fog and cloud computing by supporting edge analytics for ITS services in using CAVs within SC effectively.…”
Section: Gm Cruisementioning
confidence: 99%
“…Several approaches such as [46], [47] have been recently developed to make swarms of FAGVs safer and optimised in urban roads using the fusion of data from connected multiple AGVs, i.e., swarm intelligence using the understanding of connected and autonomous vehicles (CAVs) within the concept of Cooperative Intelligent Transportation System (C-ITS). Cui et al [48] investigate the intelligent management of FAGVs within SC from the perspective of BD analytics that can process unstructured BD effectively where most of the BD is in unstructured format [49]. In a recent study, Minh et al [50] emphasise the importance of using fog and cloud computing by supporting edge analytics for ITS services in using CAVs within SC effectively.…”
Section: Gm Cruisementioning
confidence: 99%
“…To obtain accurate results with the use of ML techniques, it is important to appropriately prepare the aforementioned flood sensor data through pre-processing techniques, i.e., cleansing and normalization. Noise reduction and dealing with missing values are essential in ML and subsequently, for higher prediction accuracy and overall performance, which are performed following the data standardization tools explained in [52].…”
Section: B Pre-processingmentioning
confidence: 99%
“…Phishing websites detection is a crucial step towards countering online fraud. Recent technological advancements have been made with the use of ML and data science methods in diverse application domains including aerospace [28], speech processing [29], healthcare technologies [30,32], border security [31], object recognition [33], cybercrime detection [27], smart city [35] and so on. Likewise, there have been many technological developments in the domain of cyber security specifically to automatically detect the phishing attacks, but there is still a room for a lots of improvements in this regard.…”
Section: Literature Reviewmentioning
confidence: 99%
“…One of the well-known dimensionality reduction technique is PCA [6] that have successfully been deployed in various application domains [33]. Major aim of the PCA is to transform a large dataset containing large number of features/variables to a lower dimension which still holds most of the information contained in the original high dimensional dataset.…”
Section: Feature Importance and Dimensionality Reductionmentioning
confidence: 99%