This project is mainly focusing on use Deep Active Learning models to optimize the data selection rules in terms of adding training data and model retraining. DNN are used to detect features on the retinal images thus extract the learned image embedding vector as well as the video sequence embedding vectors. These embedding vectors are then used to design an active learning data query system thus explore the values of different training data.

Deep Active Learning Using Scanning Laser Ophthalmoscopy Image Embedding Vectors to Optimize Training Data Selections - Fall 2022 Discovery Project
Term
Fall 2022
Topic
Public Health