Abstract

Abstract. In order to leverage and profit from unlabelled data, semi-supervised frameworks for semantic segmentation based on consistency training have been proven to be powerful tools to significantly improve the performance of purely supervised segmentation learning. However, the consensus principle behind consistency training has at least one drawback, which we identify in this paper: imbalanced label distributions within the data. To overcome the limitations of standard consistency training, we propose a novel semi-supervised framework for semantic segmentation, introducing additional losses based on prior knowledge. Specifically, we propose a lightweight architecture consisting of a shared encoder and a main decoder, which is trained in a supervised manner. An auxiliary decoder is added as additional branch in order to make use of unlabelled data based on consensus training, and we add additional constraints derived from prior information on the class distribution and on auto-encoder regularisation. Experiments performed on our concrete aggregate dataset presented in this paper demonstrate the effectiveness of the proposed approach, outperforming the segmentation results achieved by purely supervised segmentation and standard consistency training.

Highlights

  • IntroductionConcrete is the most dominant building material worldwide. Concrete consists of a mixture of aggregate particles with a wide range of particle sizes (normally 0.1 mm up to 32 mm) and geometries (round, flat, ect.) which are dispersed in a cement paste matrix

  • Nowadays, concrete is the most dominant building material worldwide

  • Concrete consists of a mixture of aggregate particles with a wide range of particle sizes and geometries which are dispersed in a cement paste matrix

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Summary

Introduction

Concrete is the most dominant building material worldwide. Concrete consists of a mixture of aggregate particles with a wide range of particle sizes (normally 0.1 mm up to 32 mm) and geometries (round, flat, ect.) which are dispersed in a cement paste matrix. One important feature determining the quality and workability of fresh concrete is its stability which refers to the segregation behaviour of the concrete due to differences in specific weight or due to vibratory energy during the construction process (Navarrete and Lopez, 2016). In this context, concrete whose aggregate distribution remains homogeneous over the height of the sample during the hardening phase is considered as stable while a sedimentation of the aggregate particles is an indicator for an unstable behaviour of the material. Fully supervised approaches for image segmentation require large numbers of representative and an-

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