2021
DOI: 10.3906/elk-2008-166
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Bagging ensemble for deep learning based gender recognition using test-time augmentation on large-scale datasets

Abstract: We present a bagging ensemble of convolutional networks in combination with the test-time augmentation technique to improve performance on the cross-dataset gender recognition problem. The bagging ensemble combines the predictions from multiple homogeneous models into the ensemble prediction. Augmentation techniques are often used in the learning phase of the CNNs to improve the generalization ability. On the other hand, test-time augmentation is not a common method used in the testing phase of the learned mod… Show more

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Cited by 4 publications
(2 citation statements)
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References 33 publications
(46 reference statements)
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“…Bagging [14] consists of creating several copies of the same model and then training each copy on a random part of the dataset using a special technique called "bootstrapping" to choose the training data. This assembly method is widely used to resolve classification problems such as sentiment analysis [15], cancer detection [16], gender recognition [17]. As far as fake news classification is concerned, Patel et al [18] used a comprehensive approach for the automatic categorization of news articles.…”
Section: Related Workmentioning
confidence: 99%
“…Bagging [14] consists of creating several copies of the same model and then training each copy on a random part of the dataset using a special technique called "bootstrapping" to choose the training data. This assembly method is widely used to resolve classification problems such as sentiment analysis [15], cancer detection [16], gender recognition [17]. As far as fake news classification is concerned, Patel et al [18] used a comprehensive approach for the automatic categorization of news articles.…”
Section: Related Workmentioning
confidence: 99%
“…In this paper, after building the proposed network model using the PyTorch framework, we use the relevant dataset for training. Specifically, we choose GENKI-4K and Eyeglasses-Dataset to train the model to recognize smiles and glasses worn [ 60 , 61 ]. However, the age detection problem is different from the above, and the model is trained using the mega age dataset because the data collected in this study are primarily Asian, and different races bring different sensory perceptions [ 62 ].…”
Section: Analysis and Findingmentioning
confidence: 99%