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Cognitive Video Surveillance Management in Hierarchical Edge Computing System with Long Short-Term Memory Modelopen access

Authors
Ugli, Dilshod Bazarov RavshanKim, JingyeomMohammed, Alaelddin F. Y.Lee, Joohyung
Issue Date
Mar-2023
Publisher
MDPI
Keywords
LSTM; cognitivevideo surveillance management; hierarchical edge computing; deep learning; object detection and tracking
Citation
SENSORS, v.23, no.5
Journal Title
SENSORS
Volume
23
Number
5
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/87829
DOI
10.3390/s23052869
ISSN
1424-8220
Abstract
Nowadays, deep learning (DL)-based video surveillance services are widely used in smart cities because of their ability to accurately identify and track objects, such as vehicles and pedestrians, in real time. This allows a more efficient traffic management and improved public safety. However, DL-based video surveillance services that require object movement and motion tracking (e.g., for detecting abnormal object behaviors) can consume a substantial amount of computing and memory capacity, such as (i) GPU computing resources for model inference and (ii) GPU memory resources for model loading. This paper presents a novel cognitive video surveillance management with long short-term memory (LSTM) model, denoted as the CogVSM framework. We consider DL-based video surveillance services in a hierarchical edge computing system. The proposed CogVSM forecasts object appearance patterns and smooths out the forecast results needed for an adaptive model release. Here, we aim to reduce standby GPU memory by model release while avoiding unnecessary model reloads for a sudden object appearance. CogVSM hinges on an LSTM-based deep learning architecture explicitly designed for future object appearance pattern prediction by training previous time-series patterns to achieve these objectives. By referring to the result of the LSTM-based prediction, the proposed framework controls the threshold time value in a dynamic manner by using an exponential weighted moving average (EWMA) technique. Comparative evaluations on both simulated and real-world measurement data on the commercial edge devices prove that the LSTM-based model in the CogVSM can achieve a high predictive accuracy, i.e., a root-mean-square error metric of 0.795. In addition, the suggested framework utilizes up to 32.1% less GPU memory than the baseline and 8.9% less than previous work.
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