Reducing problem complexity when analyzing 3-D images
Abstract:
A method for training a deep learning algorithm using N-dimensional data sets may be provided. Each data set comprises a plurality of N−1-dimensional data sets. The method comprises selecting a batch size and assembling an equally sized training batch. The samples are selected to be evenly distributed within said respective N-dimensional data sets. The method comprises also starting from a predetermined offset number, wherein the number of samples is equal to the selected batch size number, and feeding said training batches of N−1-dimensional samples into a deep learning algorithm for the training. Upon the training resulting in a learning rate that is below a predetermined level, selecting a different offset number for at least one of said N-dimensional data sets, and going back to the step of assembling. Upon the training resulting in a learning rate that is equal or higher than said predetermined level, the method stops.
Public/Granted literature
Information query
Patent Agency Ranking
0/0