Lightweight and Accurate DNN-Based Anomaly Detection at Edge

被引:8
|
作者
Zhang, Qinglong [1 ]
Han, Rui [1 ]
Xin, Gaofeng [1 ]
Liu, Chi Harold [1 ]
Wang, Guoren [1 ]
Chen, Lydia Y. [2 ]
机构
[1] Beijing Inst Technol, Beijing 100811, Peoples R China
[2] Delft Univ Technol, NL-2628 CD Delft, Netherlands
基金
中国国家自然科学基金; 瑞士国家科学基金会;
关键词
Anomaly detection; edge inference; DNN; model scaling; predictable latency;
D O I
10.1109/TPDS.2021.3137631
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Deep neural networks (DNNs) have been showing significant success in various anomaly detection applications such as smart surveillance and industrial quality control. It is increasingly important to detect anomalies directly on edge devices, because of high responsiveness requirements and tight latency constraints. The accuracy of DNN-based solutions rely on large model capacity and thus long training and inference time, making them inapplicable on resource strenuous edge devices. It is hence imperative to scale DNN model sizes in correspondence to the run-time system requirements, i.e., meeting deadlines with minimal accuracy losses, which are highly dependent on the platforms and real-time system status. Existing scaling techniques either take long training time to pregenerate scaling options or disturb the unsteady training process of anomaly detection DNNs, lacking the adaptability to heterogeneous edge systems and incurring low inference accuracies. In this article, we present LightDNN to scale DNN models for anomaly detection applications at edge, featuring high detection accuracies with lightweight training and inference time. To this end, LightDNN quickly extracts and compresses blocks in a DNN, and provides large scaling space (e.g., 1 million options) by dynamically combining these compressed blocks online. At run-time, LightDNN predicts the DNN's inference latency according to the monitored system status, and optimizes the combination of blocks to maximize its accuracy under deadline constraints. We implement and extensively evaluate LightDNN on both CPU and GPU edge platforms using 8 popular anomaly detection workloads. Comparative experiments with state-of-the-art methods show that our approach provides 145.8 to 0.56 trillion times more scaling options without increasing training and inference overheads, thus achieving as much as 15.05% increase in accuracy under the same deadlines.
引用
收藏
页码:2927 / 2942
页数:16
相关论文
共 50 条
  • [1] BATCH UNIFORMIZATION FOR MINIMIZING MAXIMUM ANOMALY SCORE OF DNN-BASED ANOMALY DETECTION IN SOUNDS
    Koizumi, Yuma
    Saito, Shoichiro
    Yamaguchi, Masataka
    Murata, Shin
    Harada, Noboru
    [J]. 2019 IEEE WORKSHOP ON APPLICATIONS OF SIGNAL PROCESSING TO AUDIO AND ACOUSTICS (WASPAA), 2019, : 6 - 10
  • [2] DNN-based anomaly prediction for the uncertainty in visual SLAM
    Bosdelekidis, Vasileios
    Johansen, Tor A.
    Sokolova, Nadezda
    [J]. 2022 17TH INTERNATIONAL CONFERENCE ON CONTROL, AUTOMATION, ROBOTICS AND VISION (ICARCV), 2022, : 684 - 691
  • [3] DNN-Based Radar Target Detection With OTFS
    Tan, Long
    Yuan, Weijie
    Zhang, Xiaoqi
    Zhang, Kecheng
    Li, Zhongjie
    Li, Yonghui
    [J]. IEEE Transactions on Vehicular Technology, 2024, 73 (10) : 15786 - 15791
  • [4] Attacking DNN-based Intrusion Detection Models
    Zhang, Xingwei
    Zheng, Xiaolong
    Wu, Desheng Dash
    [J]. IFAC PAPERSONLINE, 2020, 53 (05): : 415 - 419
  • [5] A DNN-Based Accurate Masking Using Significant Feature Sets
    Sivapatham, Shoba
    Goel, Pankaj
    Burra, Srikanth
    Sooraksa, Pitikhate
    Kar, Asutosh
    [J]. 2022 20TH INTERNATIONAL CONFERENCE ON ICT AND KNOWLEDGE ENGINEERING (ICT&KE), 2022, : 11 - 16
  • [6] Study of DNN-Based Ragweed Detection from Drones
    Lechner, Martin
    Steindl, Lukas
    Jantsch, Axel
    [J]. EMBEDDED COMPUTER SYSTEMS: ARCHITECTURES, MODELING, AND SIMULATION, SAMOS 2022, 2022, 13511 : 187 - 199
  • [7] Implementing Practical DNN-Based Object Detection Offloading Decision for Maximizing Detection Performance of Mobile Edge Devices
    Yoon, Giha
    Kim, Geun-Yong
    Yoo, Hark
    Kim, Sung Chang
    Kim, Ryangsoo
    [J]. IEEE ACCESS, 2021, 9 : 140199 - 140211
  • [8] MalPatch: Evading DNN-Based Malware Detection With Adversarial Patches
    Zhan, Dazhi
    Duan, Yexin
    Hu, Yue
    Li, Weili
    Guo, Shize
    Pan, Zhisong
    [J]. IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, 2024, 19 : 1183 - 1198
  • [9] Effects of lidar and radar resolution on DNN-based vehicle detection
    Orr, Itai
    Damari, Harel
    Halachmi, Meir
    Raifel, Mark
    Twizer, Kfir
    Cohen, Moshik
    Zalevsky, Zeev
    [J]. JOURNAL OF THE OPTICAL SOCIETY OF AMERICA A-OPTICS IMAGE SCIENCE AND VISION, 2021, 38 (10) : B29 - B36
  • [10] Parameterization of Sequence of MFCCs for DNN-based voice disorder detection
    Grzywalski, Tomasz
    Maciaszek, Adam
    Biniakowski, Adam
    Orwat, Jan
    Drgas, Szymon
    Piecuch, Mateusz
    Belluzzo, Riccardo
    Joachimiak, Krzysztof
    Niemiec, Dawid
    Ptaszynski, Jakub
    Szarzynski, Krzysztof
    [J]. 2018 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2018, : 5247 - 5251