Can pre-trained convolutional neural networks be directly used as a feature extractor for video-based neonatal sleep and wake classification?
Muhammad AwaisXi LongBin YinChen ChenSaeed AkbarzadehSaadullah Farooq AbbasiMuhammad IrfanChunmei LuXinhua WangLaishuan WangWei ChenPublished in: BMC research notes (2020)
From around 2-h Fluke® video recording of seven neonates, we achieved a modest classification performance with an accuracy, sensitivity, and specificity of 65.3%, 69.8%, 61.0%, respectively with AlexNet using Fluke® (RGB) video frames. This indicates that using a pre-trained model as a feature extractor could not fully suffice for highly reliable sleep and wake classification in neonates. Therefore, in future work a dedicated neural network trained on neonatal data or a transfer learning approach is required.