A multi-task U-net for segmentation with lazy labels
Ke, Rihuan, Bugeau, Aurélie, Papadakis, Nicolas, Schuetz, Peter, Schönlieb, Carola-Bibiane
The need for labour intensive pixel-wise annotation is a major limitation of many fully supervised learning methods for image segmentation. In this paper, we propose a deep convolutional neural network for multi-class segmentation that circumvents this problem by being trainable on coarse data labels combined with only a very small number of images with pixel-wise annotations. We call this new labelling strategy 'lazy' labels. Image segmentation is then stratified into three connected tasks: rough detection of class instances, separation of wrongly connected objects without a clear boundary, and pixel-wise segmentation to find the accurate boundaries of each object. These problems are integrated into a multitask learning framework and the model is trained end-to-end in a semi-supervised fashion. The method is applied on a dataset of food microscopy images. We show that the model gives accurate segmentation results even if exact boundary labels are missing for a majority of the annotated data. This allows more flexibility and efficiency for training deep neural networks that are data hungry in a practical setting where manual annotation is expensive, by collecting more lazy (rough) annotations than precisely segmented images.
Jun-20-2019
- Country:
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- Genre:
- Research Report (0.50)
- Industry:
- Health & Medicine > Diagnostic Medicine > Imaging (0.47)
- Technology: