2021
DOI: 10.1002/jemt.23659
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Light microscopic iris classification using ensemble multi‐class support vector machine

Abstract: Similar to other biometric systems such as fingerprint, face, DNA, iris classification could assist law enforcement agencies in identifying humans. Iris classification technology helps law‐enforcement agencies to recognize humans by matching their iris with iris data sets. However, iris classification is challenging in the real environment due to its invertible and complex texture variations in the human iris. Accordingly, this article presents an improved Oriented FAST and Rotated BRIEF with Bag‐of‐Words mode… Show more

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Cited by 10 publications
(4 citation statements)
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“…The planes that separate the classes into higher dimension are called hyperplanes (Nobel, 2006). The SVR training algorithms are mostly offline, but online algorithms are mostly used to automatically track system model time-varying changes and time lagging F I G U R E 4 Flowchart to forecast the daily cumulative infected and death cases due to COVID-19 characteristics Rehman (2021). The online SVR algorithms have drawbacks like when the margin support vector is empty and the training speed is plodding.…”
Section: Support Vector Regressionmentioning
confidence: 99%
“…The planes that separate the classes into higher dimension are called hyperplanes (Nobel, 2006). The SVR training algorithms are mostly offline, but online algorithms are mostly used to automatically track system model time-varying changes and time lagging F I G U R E 4 Flowchart to forecast the daily cumulative infected and death cases due to COVID-19 characteristics Rehman (2021). The online SVR algorithms have drawbacks like when the margin support vector is empty and the training speed is plodding.…”
Section: Support Vector Regressionmentioning
confidence: 99%
“…In model‐based techniques, the data is observed, a model is developed, and a dedicated engine is used to extract the data. This technique has been utilized to increase the training data similar to an urban driving environment (Richter et al, 2016), object detection (Aurangzeb et al, 2019; Khan et al, 2019b), forecasting (Phetchanchai et al, 2010; Saba, Rehman, & AlGhamdi, 2017), realistic digital brain image generation (Khan et al, 2021), text data segmentation Rehman, 2021; Harouni et al, 2014; Rehman, Kurniawan, & Saba, 2011; Saba & Rehman, 2012; Saba, Rehman, Al‐Dhelaan, & Al‐Rodhaan, 2014; Rehman et al, 2011), and synthetic agar plate image generation (Khan et al, 2021; Husham, Alkawaz, Saba, Rehman, & Alghamdi, 2016; Nodehi et al, 2014). However, to design such an accurate and dedicated data generation engine, deep knowledge with the desired domain expertise is essential.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Compared to their initial counterparts, secondary tumour extension into the lumens of the abdominal veins seems more prevalent. The proclivity for venous invasion is well documented in tumours from the liver and kidneys; nevertheless, various other malignancies may also extend into the venous lumen (Rehman 2020 , 2021 ).…”
Section: Ai-based Systems For Cancer Diagnosismentioning
confidence: 99%