Neural network processing of holographic images
John S. Schreck, Gabrielle Gantos, Matthew Hayman, Aaron Bansemer,, David John Gagne

TL;DR
This paper introduces HolodecML, a neural network-based hologram processing algorithm that improves particle detection and differentiation in cloud imaging, trained with synthetic data augmented with noise to mimic real-world conditions.
Contribution
HolodecML's novel training approach uses noise augmentation on synthetic holograms, enabling better detection and artifact differentiation in real holographic cloud images.
Findings
HolodecML achieved nearly 20% better particle detection than standard methods.
The model accurately estimated particle position and size comparable to existing techniques.
Training with noise-augmented synthetic data improved real-world performance.
Abstract
HOLODEC, an airborne cloud particle imager, captures holographic images of a fixed volume of cloud to characterize the types and sizes of cloud particles, such as water droplets and ice crystals. Cloud particle properties include position, diameter, and shape. We present a hologram processing algorithm, HolodecML, that utilizes a neural segmentation model, GPUs, and computational parallelization. HolodecML is trained using synthetically generated holograms based on a model of the instrument, and predicts masks around particles found within reconstructed images. From these masks, the position and size of the detected particles can be characterized in three dimensions. In order to successfully process real holograms, we find we must apply a series of image corrupting transformations and noise to the synthetic images used in training. In this evaluation, HolodecML had comparable position…
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Taxonomy
TopicsAtmospheric aerosols and clouds · Solar Radiation and Photovoltaics
