Litcius/Paper detail

A Neural Network Based Fault Management Scheme for Reliable Image Processing

Matteo Biasielli, Cristiana Bolchini, Luca Cassano, Erdem Koyuncu, Antonio Miele

2020IEEE Transactions on Computers28 citationsDOIOpen Access PDF

Abstract

Traditional reliability approaches introduce relevant costs to achieve unconditional correctness during data processing. However, many application environments are inherently tolerant to a certain degree of inexactness or inaccuracy. In this article, we focus on the practical scenario of image processing in space, a domain where faults are a threat, while the applications are inherently tolerant to a certain degree of errors. We first introduce the concept of usability of the processed image to relax the traditional requirement of unconditional correctness, and to limit the computational overheads related to reliability. We then introduce our new flexible and lightweight fault management methodology for inaccurate application environments. A key novelty of our scheme is the utilization of neural networks to reduce the costs associated with the occurrence and the detection of faults. Experiments on two aerospace image processing case studies show overall time savings of 14.89 and 34.72 percent for the two applications, respectively, as compared with the baseline classical Duplication with Comparison scheme.

Topics & Concepts

Computer scienceCorrectnessReliability (semiconductor)Fault toleranceImage processingArtificial neural networkFault managementImage (mathematics)Distributed computingComputer engineeringData miningArtificial intelligenceTheoretical computer scienceReliability engineeringAlgorithmPower (physics)Node (physics)Quantum mechanicsEngineeringPhysicsStructural engineeringRadiation Effects in ElectronicsAdversarial Robustness in Machine LearningAdvanced Neural Network Applications