Publication | Open Access
Microstructure segmentation with deep learning encoders pre-trained on a large microscopy dataset
117
Citations
38
References
2022
Year
Geometric LearningConvolutional Neural NetworkEngineeringMachine LearningMicroscopyUnion AccuracyAutoencodersBiomedical EngineeringImage ClassificationPre-trainingImage AnalysisData ScienceComputational ImagingMicrostructure SegmentationBiophysicsMicroscopy Segmentation IntersectionMachine VisionFeature LearningDeep LearningComputer VisionMicroscope Image ProcessingBioimage AnalysisBiomedical ImagingTransfer LearningLarge Microscopy DatasetMedicineImage Segmentation
Abstract This study examined the improvement of microscopy segmentation intersection over union accuracy by transfer learning from a large dataset of microscopy images called MicroNet. Many neural network encoder architectures were trained on over 100,000 labeled microscopy images from 54 material classes. These pre-trained encoders were then embedded into multiple segmentation architectures including UNet and DeepLabV3+ to evaluate segmentation performance on created benchmark microscopy datasets. Compared to ImageNet pre-training, models pre-trained on MicroNet generalized better to out-of-distribution micrographs taken under different imaging and sample conditions and were more accurate with less training data. When training with only a single Ni-superalloy image, pre-training on MicroNet produced a 72.2% reduction in relative intersection over union error. These results suggest that transfer learning from large in-domain datasets generate models with learned feature representations that are more useful for downstream tasks and will likely improve any microscopy image analysis technique that can leverage pre-trained encoders.
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