2020
DOI: 10.1109/tpami.2007.70798
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A CNN-based face detector with a simple feature map and a coarse-to-fine classifier - Withdrawn

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Cited by 12 publications
(5 citation statements)
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References 26 publications
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“…Each monitoring station collects air quality data once an hour, and the dataset contains more than 400000 instances, each with concentrations of CO and N O. To prove the effectiveness of the proposed Attention-CNN-LSTM, several models are used for comparison, including ARIMA [13], SVR [14], CNN [15], LSTM [16], and CNN-LSTM [17]. In order to prevent inconsistency of data magnitude differences and gradient explosion, we need to convert all the input data by scaling the attributes between [0, 1] using the min-max normalization.…”
Section: Performance Metric and Settingsmentioning
confidence: 99%
“…Each monitoring station collects air quality data once an hour, and the dataset contains more than 400000 instances, each with concentrations of CO and N O. To prove the effectiveness of the proposed Attention-CNN-LSTM, several models are used for comparison, including ARIMA [13], SVR [14], CNN [15], LSTM [16], and CNN-LSTM [17]. In order to prevent inconsistency of data magnitude differences and gradient explosion, we need to convert all the input data by scaling the attributes between [0, 1] using the min-max normalization.…”
Section: Performance Metric and Settingsmentioning
confidence: 99%
“…The image training dataset of each classifier was divided into batches [50] to enable faster training and minimize the memory requirement for classification. Decreasing the batch size will reduce the classifier prediction accuracy, whereas increasing the batch size will increase the needed memory for classification and also cause model overfitting that might not provide sufficient help for identifying image features [51]. Therefore, a compromise on batch size, small to adequately large (10-70), is considered in our classifier architecture to achieve the highest model accuracy in the minimum classification time, and hence enhances the cloud system performance.…”
Section: Wcnn Image Classifiers Datasetsmentioning
confidence: 99%
“…In recent years, because machine learning does not need to change the topological structure of the images, it is very popular in image recognition. Convolution neural network (CNN) is not only one of the deep learning [28] but also one of the artificial neural networks, which mainly is used in the fields of speech analysis [29] and image recognition [30].…”
Section: Cnn and Elmmentioning
confidence: 99%