Valerie KrugOtto-von-Guericke University Magdeburg | OvGU
Valerie Krug
Doctor of Engineering
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19
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Publications
Publications (19)
Deep Neural Networks (DNNs) are very successful in various fields of application. Their success, however, ismostly achieved by increasing the model complexity in terms of types of architectures or the number of neurons. At the same time, it becomes harder to interpret how DNNs solve their learned task, which can be risky in critical applications li...
Machine Learning with Deep Neural Networks (DNNs) has become a successful tool in solving tasks across various fields of application. However, the complexity of DNNs makes it difficult to understand how they solve their learned task. To improve the explainability of DNNs, we adapt methods from neuroscience that analyze complex and opaque systems. H...
The outbreak of COVID-19 has shocked the entire world with its fairly rapid spread, and has challenged different sectors. One of the most effective ways to limit its spread is the early and accurate diagnosing of infected patients. Medical imaging, such as X-ray and computed tomography (CT), combined with the potential of artificial intelligence (A...
https://ceur-ws.org/Vol-3523/paper2.pdf
Machine Learning with Deep Neural Networks (DNNs) has become a successful tool in solving tasks across various fields of application. The success of DNNs is strongly connected to their high complexity in terms of the number of network layers or of neurons in each layer, which severely complicates to understand how DNNs solve their learned task. To...
Machine Learning with deep Artificial Neural Networks (ANNs) has become a successful tool in solving tasks across various fields of application. However, this success is typically achieved by increasing the ANN complexity in terms of the number of network layers or of neurons in each layer. This severely complicates the understanding of how modern...
The concerns over radiation-related health risks associated with the increasing use of computed tomography (CT) have accelerated the development of low-dose strategies. There is a higher need for low dosage in interventional applications as repeated scanning is performed. However, using the noisier and undersampled low-dose datasets, the standard r...
Deep Learning-based Automatic Speech Recognition (ASR) models are very successful, but hard to interpret. To gain a better understanding of how Artificial Neural Networks (ANNs) accomplish their tasks, several introspection methods have been proposed. However, established introspection techniques are mostly designed for computer vision tasks and re...
The outbreak of COVID-19 has shocked the entire world with its fairly rapid spread and has challenged different sectors. One of the most effective ways to limit its spread is the early and accurate diagnosis of infected patients. Medical imaging such as X-ray and Computed Tomography (CT) combined with the potential of Artificial Intelligence (AI) p...
Deep Learning based Automatic Speech Recognition (ASR) models are very successful, but hard to interpret. To gain better understanding of how Artificial Neural Networks (ANNs) accomplish their tasks, introspection methods have been proposed. Adapting such techniques from computer vision to speech recognition is not straight-forward, because speech...
The uninformative ordering of artificial neurons in Deep Neural Networks complicates visualizing activations in deeper layers. This is one reason why the internal structure of such models is very unintuitive. In neuroscience, activity of real brains can be visualized by highlighting active regions. Inspired by those techniques, we train a convoluti...
The increasing complexity of deep Artificial Neural Networks (ANNs) allows to solve complex tasks in various applications. This comes with less understanding of decision processes in ANNs. Therefore, introspection techniques have been proposed to interpret how the network accomplishes its task. Those methods mostly visualize their results in the in...
The increase in complexity of Artificial Neural Network (ANN) encompasses difficulties in understanding what they have learned and how they accomplish their goal. As their complexity becomes closer to the one of the human brain, neuroscientific techniques could facilitate the analysis of ANN. This paper investigates an adaptation of the Event-Relat...
End-to-end training of automated speech recognition (ASR) systems requires massive data and compute resources. We explore transfer learning based on model adaptation as an approach for training ASR models under constrained GPU memory, throughput and training data. We conduct several systematic experiments adapting a Wav2Letter convolutional neural...