Neural networks (NNs) are increasingly applied in safety-critical systems such as autonomous vehicles. However, they are fragile and are often ill-behaved. Consequently, their behaviors should undergo rigorous guarantees before deployment in practice. In this paper we propose a set-boundary reachability method to investigate the safety verification problem of NNs from a topological perspective. Given an NN with an input set and a safe set, the safety verification problem is to determine whether all outputs of the NN resulting from the input set fall within the safe set. In our method, the homeomorphism property of NNs is mainly exploited, which establishes a relationship mapping boundaries to boundaries. The exploitation of this property fa...
Safety is a critical concern for the next generation of autonomy that is likely to rely heavily on d...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
Deep neural networks (DNNs) are increasingly applied in safety-critical domains, such as self-drivin...
Artificial neural networks have recently been utilized in many feedback control systems and introduc...
The increasing prevalence of neural networks (NNs) in safety-critical applications calls for methods...
As neural networks (NNs) become more prevalent in safety-critical applications such as control of ve...
Machine learning (ML) has demonstrated great success in numerous complicated tasks. Fueled by these ...
Hybrid zonotopes generalize constrained zonotopes by introducing additional binary variables and pos...
Safety certification of data-driven control techniques remains a major open problem. This work inves...
International audienceA forward reachability analysis method for the safety verification of nonlinea...
We investigate the complexity of the reachability problem for (deep) neuralnetworks: does it compute...
Neural networks(NNs) have been widely used over the past decade at the core of intelligentsystems fr...
This paper presents Verisig, a hybrid system approach to verifying safety properties of closed-loop ...
In this work, we consider the problem of learning a feed-forward neural network controller to safely...
This is the final version. Available from IJCAI via the DOI in this recordVerifying correctness of d...
Safety is a critical concern for the next generation of autonomy that is likely to rely heavily on d...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
Deep neural networks (DNNs) are increasingly applied in safety-critical domains, such as self-drivin...
Artificial neural networks have recently been utilized in many feedback control systems and introduc...
The increasing prevalence of neural networks (NNs) in safety-critical applications calls for methods...
As neural networks (NNs) become more prevalent in safety-critical applications such as control of ve...
Machine learning (ML) has demonstrated great success in numerous complicated tasks. Fueled by these ...
Hybrid zonotopes generalize constrained zonotopes by introducing additional binary variables and pos...
Safety certification of data-driven control techniques remains a major open problem. This work inves...
International audienceA forward reachability analysis method for the safety verification of nonlinea...
We investigate the complexity of the reachability problem for (deep) neuralnetworks: does it compute...
Neural networks(NNs) have been widely used over the past decade at the core of intelligentsystems fr...
This paper presents Verisig, a hybrid system approach to verifying safety properties of closed-loop ...
In this work, we consider the problem of learning a feed-forward neural network controller to safely...
This is the final version. Available from IJCAI via the DOI in this recordVerifying correctness of d...
Safety is a critical concern for the next generation of autonomy that is likely to rely heavily on d...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
Deep neural networks (DNNs) are increasingly applied in safety-critical domains, such as self-drivin...