The advent of data mining and machine learning has highlighted the value of large and varied sources of data, while increasing the demand for synthetic data captures the structural and statistical characteristics of the original data without revealing personal or proprietary information contained in the original dataset. In this dissertation, we use examples from original research to show that, using appropriate models and input parameters, synthetic data that mimics the characteristics of real data can be generated with sufficient rate and quality to address the volume, structural complexity, and statistical variation requirements of research and development of digital information processing systems. First, we present a progression of rese...
Hierarchical neural networks with large numbers of layers are the state of the art for most computer...
Large and balanced datasets are normally crucial for many machine learning models, especially when t...
Substantial volumes of data are generated at the edge as a result of an exponential increase in the ...
The concept of Internet of Things (IoT) is rapidly moving from a vision to being pervasive in our ev...
In the recent years deep learning has become more and more popular and it is applied in a variety o...
Computer vision researchers spent a lot of time creating large datasets, yet there is still much inf...
The essence and importance of rich and relevant data can not be overemphasized in the field of artif...
The real data are not always available/accessible/sufficient or in many cases they are incomplete an...
An application area of increasing importance is creating agent-based simulations to model human soci...
Realistic synthetic image data rendered from 3D models can be used to augment image sets and train i...
Deep learning allows computers to learn from observations, or else training data. Successful applica...
Synthetic data are artificially generated data that closely model real-world measurements, and can ...
Masters Degree. University of KwaZulu-Natal, Durban.By 2025, there will be upwards of 75 billion IoT...
The proliferation of IoT devices heralds the emergence of intelligent embedded ecosystems that can c...
With the recent advances and increasing activities in data mining and analysis, the protection of th...
Hierarchical neural networks with large numbers of layers are the state of the art for most computer...
Large and balanced datasets are normally crucial for many machine learning models, especially when t...
Substantial volumes of data are generated at the edge as a result of an exponential increase in the ...
The concept of Internet of Things (IoT) is rapidly moving from a vision to being pervasive in our ev...
In the recent years deep learning has become more and more popular and it is applied in a variety o...
Computer vision researchers spent a lot of time creating large datasets, yet there is still much inf...
The essence and importance of rich and relevant data can not be overemphasized in the field of artif...
The real data are not always available/accessible/sufficient or in many cases they are incomplete an...
An application area of increasing importance is creating agent-based simulations to model human soci...
Realistic synthetic image data rendered from 3D models can be used to augment image sets and train i...
Deep learning allows computers to learn from observations, or else training data. Successful applica...
Synthetic data are artificially generated data that closely model real-world measurements, and can ...
Masters Degree. University of KwaZulu-Natal, Durban.By 2025, there will be upwards of 75 billion IoT...
The proliferation of IoT devices heralds the emergence of intelligent embedded ecosystems that can c...
With the recent advances and increasing activities in data mining and analysis, the protection of th...
Hierarchical neural networks with large numbers of layers are the state of the art for most computer...
Large and balanced datasets are normally crucial for many machine learning models, especially when t...
Substantial volumes of data are generated at the edge as a result of an exponential increase in the ...