Sparsity Turns Adversarial: Energy and Latency Attacks on Deep Neural Networks
Sarada Krithivasan, Sanchari Sen, Anand Raghunathan

TL;DR
This paper introduces sparsity attacks on DNNs that intentionally reduce activation sparsity to increase energy consumption and latency, exposing vulnerabilities in sparsity-optimized systems.
Contribution
It presents a novel adversarial attack method targeting activation sparsity, demonstrating significant degradation in DNN efficiency and robustness of existing defenses.
Findings
Decreased activation sparsity by up to 1.82x
Increased latency and energy consumption in hardware implementations
Attack remains effective against certain defense techniques
Abstract
Adversarial attacks have exposed serious vulnerabilities in Deep Neural Networks (DNNs) through their ability to force misclassifications through human-imperceptible perturbations to DNN inputs. We explore a new direction in the field of adversarial attacks by suggesting attacks that aim to degrade the computational efficiency of DNNs rather than their classification accuracy. Specifically, we propose and demonstrate sparsity attacks, which adversarial modify a DNN's inputs so as to reduce sparsity (or the presence of zero values) in its internal activation values. In resource-constrained systems, a wide range of hardware and software techniques have been proposed that exploit sparsity to improve DNN efficiency. The proposed attack increases the execution time and energy consumption of sparsity-optimized DNN implementations, raising concern over their deployment in latency and…
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