COVID-19 identification method based on multi-information sample class adaptive classification network
A COVID-19, adaptive classification technology, applied in the field of medical image classification, can solve the problems of lack of convincing test results, affect the accuracy of test results, and the accuracy of test results is not high, so as to improve the efficiency of detection and recognition and good adaptability , to avoid the effect of false accuracy
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[0037] The embodiment uses multi-information sample class adaptive classification network to automatically identify and detect COVID-19. Such as image 3 As shown, the multi-information sample class adaptive classification network includes a medical image analysis unit, a personal experience analysis unit and a classifier. The medical image analysis unit uses ResNet50, such as Figure 7 Shown; personal experience analysis unit includes BiLSTM and Text-CNN, such as Figure 8 shown. The Text-CNN of the embodiment refers to the Text-CNN network disclosed by Chen Y in his dissertation "Convolutional neural network for sentence classification" in 2015.
[0038] Such as figure 1 Shown, the COVID-19 identification method based on multi-information sample class adaptive classification network, comprises the following steps:
[0039] Step 1: collect different types of human chest X-ray images and corresponding personal experience data from different data sources, classify them, and...
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