×
This paper introduces DLRegion, a coverage-guided fuzz testing technique of DNNs with region-based neuron selection strategies.
This paper introduces DLRegion, a coverage-guided fuzz testing technique of DNNs with region-based neuron selection strategies.
This paper introduces DLRegion, a coverage-guided fuzz testing technique of DNNs with region-based neuron selection strategies. DLRegion can expose erroneous ...
In this paper, we propose DeepHunter, a coverage-guided fuzz testing framework for detecting potential defects of general-purpose DNNs.
Missing: DLRegion: | Show results with:DLRegion:
People also ask
In this paper, we propose an automated fuzz testing framework for hunting potential defects of general-purpose DNNs. It performs metamorphic mutation to ...
Missing: DLRegion: | Show results with:DLRegion:
Jul 15, 2019 · In this paper, we propose DeepHunter, a coverage-guided fuzz testing framework for detecting potential defects of general-purpose DNNs. To this ...
Missing: DLRegion: | Show results with:DLRegion:
We further propose a seed selection strategy that combines both diversity-based and recency-based seed selection. We implement and incorporate 5 existing ...
Missing: DLRegion: | Show results with:DLRegion:
Strategies for neuron selection. To maximize the neuron coverage, we propose four heuristic strategies for selecting neurons more likely to improve coverage ...
Missing: DLRegion: | Show results with:DLRegion:
Jul 15, 2019 · In this paper, we propose DeepHunter, a coverage-guided fuzz testing framework for detecting potential defects of general-purpose DNNs. To this ...
Missing: DLRegion: | Show results with:DLRegion:
Fuzz testing and adversarial testing are currently mainstream. DNN test generation methods, primarily targeting convolutional neural networks, with objective ...
Missing: DLRegion: | Show results with:DLRegion: