2022
DOI: 10.1016/j.eswa.2022.117672
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Leukocytes Image Classification Using Optimized Convolutional Neural Networks

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Cited by 16 publications
(5 citation statements)
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“…Önerilen yöntem ile elde edilen parametre sayısına en yakın 126,000 parametre ile Hosseini vd. [33] ve 133,000 parametre ile Banik vd. [34] yöntemlerinde elde edilmiştir.…”
Section: Deneysel Sonuçlar (Experimental Results)unclassified
“…Önerilen yöntem ile elde edilen parametre sayısına en yakın 126,000 parametre ile Hosseini vd. [33] ve 133,000 parametre ile Banik vd. [34] yöntemlerinde elde edilmiştir.…”
Section: Deneysel Sonuçlar (Experimental Results)unclassified
“…They share the phagocytic ability of neutrophils, break down bacteria, and remove waste from the blood. They have a longer life span compared with other leukocytes ( 20 ).…”
Section: Methodsmentioning
confidence: 99%
“…The grid search (GS) and random search (RS) hyperparameter optimization methods were used by Hosseini et al. ( 20 ) to categorize images of four different categories of leukocytes. ACC of 99% on the training set and of 97% on the validation set was effectively obtained by the given hybrid technique.…”
Section: Literature Reviewmentioning
confidence: 99%
“…However, it is computationally expensive and might not be suitable in cases where the model contains a large number of hyperparameters or where the model is computationally expensive. Another universal method of hyperparameter optimization is random search, in which upper and lower limits for all hyperparameters also need to be artifcially specifed, but the method assumes that diferent hyperparameters are not equally important for the model performance, so it is more efcient to use randomly distributed points rather than uniformly distributed points to cover the parameter space [51,54]. In practice, it has been found that random search is also easy to implement and performs better than grid search, because it can fnd the optimal combination of hyperparameters almost as well as grid search and in signifcantly less time [51].…”
Section: Hyperparameter Optimizationmentioning
confidence: 99%