Neural networks have demonstrated unmatched performance in a range of classification tasks. Despite numerous efforts of the research community, novelty detection remains one of the significant limitations of neural networks. The ability to identify previously unseen inputs as novel is crucial for our understanding of the decisions made by neural networks. At runtime, inputs not falling into any of the categories learned during training cannot be classified correctly by the neural network. Existing approaches treat the neural network as a black box and try to detect novel inputs based on the confidence of the output predictions. However, neural networks are not trained to reduce their confidence for novel inputs, which limits the effectivene...
Neural-network classifiers are trained to achieve high prediction accuracy. However, their performan...
This thesis concerns itself with the use and examination of convolutional neural networks in the con...
Forecasting, classification, and data analysis may all gain from improved pattern recognition result...
Neural networks have demonstrated unmatched performance in a range of classification tasks. Despite ...
Neural-network classifiers achieve high accuracy when predicting the class of an input that they wer...
97 pagesWhile many computer vision researchers race to architect improved convolutional neural netwo...
Novelty detection is concerned with recognising inputs that differ in some way from those that are u...
Neural-network classifiers achieve high accuracy when predicting the class of an input that they wer...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
Complex forms of pattern recognition is more widely used these days. Complex recognition problems ar...
Deep learning has recently become the state of the art in many computer vision applications and in i...
In machine learning, pattern classification assigns high-dimensional vectors (observations) to class...
Deep neural networks are now rivaling human accuracy in several pattern recognition problems. Compar...
Neural networks pose a privacy risk to training data due to their propensity to memorise and leak in...
Prevalent use of Neural Networks for Classification Tasks has brought to attention the security and ...
Neural-network classifiers are trained to achieve high prediction accuracy. However, their performan...
This thesis concerns itself with the use and examination of convolutional neural networks in the con...
Forecasting, classification, and data analysis may all gain from improved pattern recognition result...
Neural networks have demonstrated unmatched performance in a range of classification tasks. Despite ...
Neural-network classifiers achieve high accuracy when predicting the class of an input that they wer...
97 pagesWhile many computer vision researchers race to architect improved convolutional neural netwo...
Novelty detection is concerned with recognising inputs that differ in some way from those that are u...
Neural-network classifiers achieve high accuracy when predicting the class of an input that they wer...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
Complex forms of pattern recognition is more widely used these days. Complex recognition problems ar...
Deep learning has recently become the state of the art in many computer vision applications and in i...
In machine learning, pattern classification assigns high-dimensional vectors (observations) to class...
Deep neural networks are now rivaling human accuracy in several pattern recognition problems. Compar...
Neural networks pose a privacy risk to training data due to their propensity to memorise and leak in...
Prevalent use of Neural Networks for Classification Tasks has brought to attention the security and ...
Neural-network classifiers are trained to achieve high prediction accuracy. However, their performan...
This thesis concerns itself with the use and examination of convolutional neural networks in the con...
Forecasting, classification, and data analysis may all gain from improved pattern recognition result...