Image Recognition Method Based on Residual Neural Network with Implicit Euler Skip Connections
A skip connection and image recognition technology, applied in biological neural network models, character and pattern recognition, neural architecture, etc., to achieve the effects of improving accuracy and effectiveness, strong robustness and credibility, and robustness of test data
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[0041] Below in conjunction with accompanying drawing, further describe the present invention through embodiment, but do not limit the scope of the present invention in any way.
[0042] The present invention can be applied to any application related to image recognition, such as face recognition, object detection, text recognition, etc. The following embodiments apply the method of the present invention to image classification problems and test the robustness of the method. The specific implementation mainly includes four steps, which are data collection, data preprocessing, building and training the model for feature extraction and feature recognition, and testing the classification performance and robustness of the model. Among them, the residual network model includes both feature extraction and feature recognition processes, and its performance is superior to other traditional methods. However, applying the residual network model containing implicit Euler skip connection ...
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