Machine learning algorithms have become a very essential tool in the fields of math and engineering, as well as for industrial purposes (fabric, medicine, sport, etc.). This research leverages classical machine learning algorithms for innovative accurate and efficient fabric protrusion detection. We present an approach for improving model training with a small dataset. We use a few classic statistics machine learning algorithms (decision trees, logistic regression, etc.) and a fully connected neural network (NN) model. We also present an approach to optimize a model accuracy rate and execution time for finding the best accuracy using parallel processing with Dask (Python)
Huxohl T, Kummert F. Model-Assisted Labeling and Self-Training for Label Noise Reduction in the Dete...
This thesis initially overviews the general methodologies and techniques of databased models design ...
In this research, we investigate possibilities to train convolutional neural networks with a small d...
In this paper, we tackle the problem of selecting the optimal model for a given structured pattern c...
Up until now, it has been shown that big parts of the so called Industry 4.0 are impacted by Machine...
Supervised machine learning is commonly applied in order to give machines the ability to assign labe...
Scaffolding, defined as support to help students perform and gain skill at complex tasks, has been i...
The digital industrial revolution calls for smart manufacturing plants, i.e. plants that include sen...
Machine Learning (ML) increasingly become a popular technique to model and simulate the mechanical p...
Data and Machine Learning codes for: Machine learning enabled identification of sheet metal local...
Machine learning model as used in 'Machine learning to improve orientation estimation in sports situ...
Day by day, machine learning is changing our lives in ways we could not have imagined just 5 years a...
This dataset contains the training and test data, as well as the trained neural networks as used for...
Machine learning has widely spread in the areas of pattern recognition, prediction or forecasting, c...
To address the problem that a deep neural network needs a sufficient number of training samples to h...
Huxohl T, Kummert F. Model-Assisted Labeling and Self-Training for Label Noise Reduction in the Dete...
This thesis initially overviews the general methodologies and techniques of databased models design ...
In this research, we investigate possibilities to train convolutional neural networks with a small d...
In this paper, we tackle the problem of selecting the optimal model for a given structured pattern c...
Up until now, it has been shown that big parts of the so called Industry 4.0 are impacted by Machine...
Supervised machine learning is commonly applied in order to give machines the ability to assign labe...
Scaffolding, defined as support to help students perform and gain skill at complex tasks, has been i...
The digital industrial revolution calls for smart manufacturing plants, i.e. plants that include sen...
Machine Learning (ML) increasingly become a popular technique to model and simulate the mechanical p...
Data and Machine Learning codes for: Machine learning enabled identification of sheet metal local...
Machine learning model as used in 'Machine learning to improve orientation estimation in sports situ...
Day by day, machine learning is changing our lives in ways we could not have imagined just 5 years a...
This dataset contains the training and test data, as well as the trained neural networks as used for...
Machine learning has widely spread in the areas of pattern recognition, prediction or forecasting, c...
To address the problem that a deep neural network needs a sufficient number of training samples to h...
Huxohl T, Kummert F. Model-Assisted Labeling and Self-Training for Label Noise Reduction in the Dete...
This thesis initially overviews the general methodologies and techniques of databased models design ...
In this research, we investigate possibilities to train convolutional neural networks with a small d...