2021
DOI: 10.1007/978-3-030-81685-8_12
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Robustness Verification of Semantic Segmentation Neural Networks Using Relaxed Reachability

Abstract: This paper introduces robustness verification for semantic segmentation neural networks (in short, semantic segmentation networks [SSNs]), building on and extending recent approaches for robustness verification of image classification neural networks. Despite recent progress in developing verification methods for specifications such as local adversarial robustness in deep neural networks (DNNs) in terms of scalability, precision, and applicability to different network architectures, layers, and activation func… Show more

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Cited by 26 publications
(25 citation statements)
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“…Robustness typically denotes the property of a system to maintain its primary performance in the presence of fuctuations in some parameters [52,53]. Normally, robustness is used to evaluate how stable a system is against uncertain utilization environments.…”
Section: System Robustnessmentioning
confidence: 99%
“…Robustness typically denotes the property of a system to maintain its primary performance in the presence of fuctuations in some parameters [52,53]. Normally, robustness is used to evaluate how stable a system is against uncertain utilization environments.…”
Section: System Robustnessmentioning
confidence: 99%
“…Team Diego Manzanas Lopez (Vanderbilt University), Neelanjana Pal (Vanderbilt University), Samuel Sasaki (Vanderbilt University), Hoang-Dung Tran (University of Nebraska-Lincoln), Taylor T. Johnson (Vanderbilt University) Description The Neural Network Verification (NNV) Tool [41,24] is a formal verification software tool for deep learning models and cyber-physical systems with neural network components written in MATLAB and available at https://github.com/verivital/nnv. NNV uses a star-set state-space representation and reachability algorithm that allows for a layer-by-layer computation of exact or overapproximate reachable sets for feed-forward [39], convolutional [36], semantic segmentation (SSNN) [40], and recurrent (RNN) [38] neural networks, as well as neural network control systems (NNCS) [37,41] and neural ordinary differential equations (Neural 5 Thanks to the authors of the α − β-CROWN team, an unsoundness issue of the competition version of Marabou on the ViT benchmarks was discovered. The networks in that benchmark contain bilinear and softmax connections.…”
Section: Nnvmentioning
confidence: 99%
“…If no counterexamples are found (i.e., demonstrate that the property is SAT), then we utilize an iterative refinement approach using reachability analysis to verify the property (UNSAT). this consists of performing reachability analysis using a relax-approximation method [40], if not verified, then a less conservative approximation based on zonotope pre-filtering approach [35], and finally using the exact analysis when possible [36] until the specification is verified or there is a timeout. Link https://github.com/verivital/nnv Commit fb858b070d7c2fb1f036ac7fc374e1b9dfb5055e Hardware and licenses CPU, MATLAB license.…”
Section: Nnvmentioning
confidence: 99%
“…Many researchers are focused on developing new formal method based tools to address this vastly evolving field, some examples being satisfiability modulo theories (SMT) [16], polyhedron [35,44], mixed-integer linear program (MILP) [8], interval arithmetic [41,42], zonotope [30], input partition [46], linearization [43], abstract-domain [31] and star set based [36] methods. So far, several safety verification methodologies have been proposed for different neural network (NN) architectures, the focus mostly being on Feed-Forward Networks [7,10,36,46], Convolutional Neural networks [3,9,17,20,31,34], Semantic segmentation networks [4,12,19,22,25,37,50] and some on Recurrent Neural Networks [2,18].…”
Section: Related Workmentioning
confidence: 99%