In this research, we investigate possibilities to train convolutional neural networks with a small dataset for semantic segmentation, while achieving the best possible model generalization. In particular, we want to segment corrosion on the surface of industrial objects. In order to achieve model generalization, we utilize a selection of established and advanced strategies, i.e. Self-Supervised-Learning. Besides radiometric- and geometric-based data augmentation, we focus on model complexity regarding encoder and decoder, as well as optimal pretraining. Finally, we evaluate the best performing model against a pixel-wise random forest classification. As a result, we achieve an f1-score of 0.79 for the best performing model regarding the segm...
The goal of blast-hole detection is to help place charge explosives into blast-holes. This process i...
Corrosion - degradation in metal structures - is problematic, expensive to rectify, and can be unpre...
Semantic segmentation is one of the fundamental and challenging problems in computer vision, which c...
In this research, we investigate possibilities to train convolutional neural networks with a small d...
Metal corrosion in high-risk areas, such as high-altitude cables and chemical factories, is very com...
This paper reports the results of a study that aims to develop semi-automatic methods for assessing ...
The inspection of infrastructure for corrosion remains a task that is typically performed manually b...
In this thesis, three well known self-supervised methods have been implemented and trained on road s...
Thanks to the development of deep neural networks, a number of computer vision tasks have achieved g...
Training convolutional networks for semantic segmentation with strong (per-pixel) and weak (per-boun...
Quantitative analysis of material microstructure is a well-known method to derive chemical and physi...
This master’s thesis evaluates five existing Convolutional Neural Network (CNN) models for semantic ...
Modern deep learning has enabled amazing developments of computer vision in recent years (Hinton and...
Semantic segmentation refers to the process of assigning an object label (e.g., building, road, side...
In this work, we present a procedure to automatically generate an high-quality training dataset of c...
The goal of blast-hole detection is to help place charge explosives into blast-holes. This process i...
Corrosion - degradation in metal structures - is problematic, expensive to rectify, and can be unpre...
Semantic segmentation is one of the fundamental and challenging problems in computer vision, which c...
In this research, we investigate possibilities to train convolutional neural networks with a small d...
Metal corrosion in high-risk areas, such as high-altitude cables and chemical factories, is very com...
This paper reports the results of a study that aims to develop semi-automatic methods for assessing ...
The inspection of infrastructure for corrosion remains a task that is typically performed manually b...
In this thesis, three well known self-supervised methods have been implemented and trained on road s...
Thanks to the development of deep neural networks, a number of computer vision tasks have achieved g...
Training convolutional networks for semantic segmentation with strong (per-pixel) and weak (per-boun...
Quantitative analysis of material microstructure is a well-known method to derive chemical and physi...
This master’s thesis evaluates five existing Convolutional Neural Network (CNN) models for semantic ...
Modern deep learning has enabled amazing developments of computer vision in recent years (Hinton and...
Semantic segmentation refers to the process of assigning an object label (e.g., building, road, side...
In this work, we present a procedure to automatically generate an high-quality training dataset of c...
The goal of blast-hole detection is to help place charge explosives into blast-holes. This process i...
Corrosion - degradation in metal structures - is problematic, expensive to rectify, and can be unpre...
Semantic segmentation is one of the fundamental and challenging problems in computer vision, which c...