Fully Convolutional Neural Network for Detection and Counting of Diatoms on Coatings after Short-Term Field Exposure.
Lutz M K KrauseJulian KocBodo RosenhahnAxel RosenhahnPublished in: Environmental science & technology (2020)
While the use of deep learning is a valuable technology for automatic detection systems for medical data and images, the biofouling community is still lacking an analytical tool for the detection and counting of diatoms on samples after short-term field exposure. In this work, a fully convolutional neural network was implemented as a fast and simple approach to detect diatoms on two-channel (fluorescence and phase-contrast) microscopy images by predicting bounding boxes. The developed approach performs well with only a small number of trainable parameters and a F1 score of 0.82. Counting diatoms was evaluated on a data set of 600 microscopy images of three different surface chemistries (hydrophilic and hydrophobic) and is very similar to counting by humans while demanding only a fraction of the analysis time.
Keyphrases
- convolutional neural network
- deep learning
- label free
- artificial intelligence
- single molecule
- loop mediated isothermal amplification
- healthcare
- real time pcr
- big data
- machine learning
- high resolution
- electronic health record
- optical coherence tomography
- liquid chromatography
- mental health
- high throughput
- mass spectrometry
- computed tomography
- ionic liquid