Jon Gutiérrez-Zaballa , Koldo Basterretxea , Javier Echanobe
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引用次数: 0
摘要
随着人工智能(AI)算法在边缘设备上的部署日益普及,提高基于人工智能的自主感知和决策系统的鲁棒性和可靠性正变得与精度和性能同等重要,尤其是在自动驾驶和航空航天等被视为安全关键的应用领域。本文深入探讨了嵌入式深度神经网络(DNN)的鲁棒性评估,尤其关注了单次事件中断(SEU)产生的参数扰动对用于图像语义分割的卷积神经网络(CNN)的影响。通过仔细研究各种编码器-解码器模型对软误差的逐层和逐位敏感性,本研究深入探讨了分割 DNN 对 SEU 的脆弱性,并评估了模型剪枝和参数量化等技术对以嵌入式实现为目标的压缩模型的鲁棒性的影响。研究结果为了解 SEU 引发故障的机制提供了宝贵的见解,从而可以评估 DNN 预先训练后的鲁棒性。此外,基于收集到的数据,我们提出了一套实用的轻量级错误缓解技术,无需内存或计算成本,适用于资源受限的部署。用于执行故障注入(FI)活动的代码见 ,而用于实现建议技术的代码见 。
Evaluating single event upsets in deep neural networks for semantic segmentation: An embedded system perspective
As the deployment of artificial intelligence (AI) algorithms at edge devices becomes increasingly prevalent, enhancing the robustness and reliability of autonomous AI-based perception and decision systems is becoming as relevant as precision and performance, especially in applications areas considered safety-critical such as autonomous driving and aerospace. This paper delves into the robustness assessment in embedded Deep Neural Networks (DNNs), particularly focusing on the impact of parameter perturbations produced by single event upsets (SEUs) on convolutional neural networks (CNN) for image semantic segmentation. By scrutinizing the layer-by-layer and bit-by-bit sensitivity of various encoder–decoder models to soft errors, this study thoroughly investigates the vulnerability of segmentation DNNs to SEUs and evaluates the consequences of techniques like model pruning and parameter quantization on the robustness of compressed models aimed at embedded implementations. The findings offer valuable insights into the mechanisms underlying SEU-induced failures that allow for evaluating the robustness of DNNs once trained in advance. Moreover, based on the collected data, we propose a set of practical lightweight error mitigation techniques with no memory or computational cost suitable for resource-constrained deployments. The code used to perform the fault injection (FI) campaign is available at https://github.com/jonGuti13/TensorFI2, while the code to implement proposed techniques is available at https://github.com/jonGuti13/parameterProtection.
期刊介绍:
The Journal of Systems Architecture: Embedded Software Design (JSA) is a journal covering all design and architectural aspects related to embedded systems and software. It ranges from the microarchitecture level via the system software level up to the application-specific architecture level. Aspects such as real-time systems, operating systems, FPGA programming, programming languages, communications (limited to analysis and the software stack), mobile systems, parallel and distributed architectures as well as additional subjects in the computer and system architecture area will fall within the scope of this journal. Technology will not be a main focus, but its use and relevance to particular designs will be. Case studies are welcome but must contribute more than just a design for a particular piece of software.
Design automation of such systems including methodologies, techniques and tools for their design as well as novel designs of software components fall within the scope of this journal. Novel applications that use embedded systems are also central in this journal. While hardware is not a part of this journal hardware/software co-design methods that consider interplay between software and hardware components with and emphasis on software are also relevant here.