Despite impressive capabilities and outstanding performance, deep neural networks (DNNs) have captured increasing public concern about their security problems, due to their frequently occurred erroneous behaviors. Therefore, it is necessary to conduct a systematical testing for DNNs before they are deployed to real-world applications. Existing testing methods have provided fine-grained metrics based on neuron coverage and proposed various approaches to improve such metrics. However, it has been gradually realized that a higher neuron coverage does \textit{not} necessarily represent better capabilities in identifying defects that lead to errors. Besides, coverage-guided methods cannot hunt errors due to faulty training procedure. So the robu...
Testing deep learning-based systems is crucial but challenging due to the required time and labor fo...
Deep neural networks (DNNs) are susceptible to bugs, just like other types of software systems. A si...
In the last 3 decades, the scientific community has improved the research over Neural Networks, reev...
Deep learning is increasingly applied to safety-critical application domains such as autonomous cars...
We develop DEEPTRAVERSAL, a feedback-driven framework to test DNNs. DEEPTRAVERSAL first launches an ...
This paper summarizes eight design requirements for DNN testing criteria, taking into account distri...
The safety and reliability of deep learning systems necessitate a compelling demonstration of their ...
peer reviewedDeep Neural Networks (DNNs) have been extensively used in many areas including image pr...
Deep Learning (DL) systems are rapidly being adopted in safety and security critical domains, urgent...
Nowadays, deep neural networks based software have been widely applied in many areas including safet...
Deep neural networks (DNNs) have a wide range of applications, and software employing them must be t...
Successful deployment of Deep Neural Networks (DNNs), particularly in safety-critical systems, requi...
Deep Neural Networks (DNN) are typically tested for accuracy relying on a set of unlabelled real wor...
When Deep Neural Networks (DNNs) are used in safety-critical systems, engineers should determine the...
Context: Deep learning has proven to be a valuable component in object detection and classification,...
Testing deep learning-based systems is crucial but challenging due to the required time and labor fo...
Deep neural networks (DNNs) are susceptible to bugs, just like other types of software systems. A si...
In the last 3 decades, the scientific community has improved the research over Neural Networks, reev...
Deep learning is increasingly applied to safety-critical application domains such as autonomous cars...
We develop DEEPTRAVERSAL, a feedback-driven framework to test DNNs. DEEPTRAVERSAL first launches an ...
This paper summarizes eight design requirements for DNN testing criteria, taking into account distri...
The safety and reliability of deep learning systems necessitate a compelling demonstration of their ...
peer reviewedDeep Neural Networks (DNNs) have been extensively used in many areas including image pr...
Deep Learning (DL) systems are rapidly being adopted in safety and security critical domains, urgent...
Nowadays, deep neural networks based software have been widely applied in many areas including safet...
Deep neural networks (DNNs) have a wide range of applications, and software employing them must be t...
Successful deployment of Deep Neural Networks (DNNs), particularly in safety-critical systems, requi...
Deep Neural Networks (DNN) are typically tested for accuracy relying on a set of unlabelled real wor...
When Deep Neural Networks (DNNs) are used in safety-critical systems, engineers should determine the...
Context: Deep learning has proven to be a valuable component in object detection and classification,...
Testing deep learning-based systems is crucial but challenging due to the required time and labor fo...
Deep neural networks (DNNs) are susceptible to bugs, just like other types of software systems. A si...
In the last 3 decades, the scientific community has improved the research over Neural Networks, reev...