Author:
Pawłowski Jarosław,Majchrowska Sylwia,Golan Tomasz
Abstract
AbstractWe introduce an effective strategy to generate an annotated synthetic dataset of microbiological images of Petri dishes that can be used to train deep learning models in a fully supervised fashion. The developed generator employs traditional computer vision algorithms together with a neural style transfer method for data augmentation. We show that the method is able to synthesize a dataset of realistic looking images that can be used to train a neural network model capable of localising, segmenting, and classifying five different microbial species. Our method requires significantly fewer resources to obtain a useful dataset than collecting and labeling a whole large set of real images with annotations. We show that starting with only 100 real images, we can generate data to train a detector that achieves comparable results (detection mAP $$=0.416$$
=
0.416
, and counting MAE $$=4.49$$
=
4.49
) to the same detector but trained on a real, several dozen times bigger dataset (mAP $$=0.520$$
=
0.520
, MAE $$=4.31$$
=
4.31
), containing over 7 k images. We prove the usefulness of the method in microbe detection and segmentation, but we expect that it is general and flexible and can also be applicable in other domains of science and industry to detect various objects.
Funder
Narodowe Centrum Badań i Rozwoju
Publisher
Springer Science and Business Media LLC
Cited by
11 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献