Flying By ML -- CNN Inversion of Affine Transforms
Abstract
A machine learning method using CNNs to interpret cockpit gauges from images, validated with synthetic data, introduces dataset generation techniques and CNN interpolation for state predictions.
This paper describes a machine learning method to automate reading of cockpit gauges, using a CNN to invert affine transformations and deduce aircraft states from instrument images. Validated with synthetic images of a turn-and-bank indicator, this research introduces methods such as generating datasets from a single image, the 'Clean Training Principle' for optimal noise-free training, and CNN interpolation for continuous value predictions from categorical data. It also offers insights into hyperparameter optimization and ML system software engineering.
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