Paper ID: 2408.00783
Data-driven Verification of DNNs for Object Recognition
Clemens Otte, Yinchong Yang, Danny Benlin Oswan
The paper proposes a new testing approach for Deep Neural Networks (DNN) using gradient-free optimization to find perturbation chains that successfully falsify the tested DNN, going beyond existing grid-based or combinatorial testing. Applying it to an image segmentation task of detecting railway tracks in images, we demonstrate that the approach can successfully identify weaknesses of the tested DNN regarding particular combinations of common perturbations (e.g., rain, fog, blur, noise) on specific clusters of test images.
Submitted: Jul 17, 2024