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dc.contributor.authorKurochka, K.
dc.contributor.authorPanarin, K.
dc.contributor.authorKarpenko, D.
dc.coverage.spatialMinskru_RU
dc.date.accessioned2026-05-11T08:22:35Z
dc.date.available2026-05-11T08:22:35Z
dc.date.issued2025
dc.identifier.citationKurochka, Konstantin An Approach to Resource-Efficient Optimization for Real-time Computer Vision-based OHS Monitoring on Resource-constrained Industrial Objects / Kurochka Konstantin, Konstantin Panarin, Daniil Karpenko // Pattern Recognition and Information Processing (PRIP'2025) : Proceedings of the 17th International Conference, 16–18 Sept. 2025, Minsk, Belarus. – Minsk : UIIP NASB, 2025. – P. 180–184.ru_RU
dc.identifier.urihttps://elib.gstu.by/handle/220612/48897
dc.description.abstractThis paper proposes and investigates a methodology for the resource-efficient optimization of real-time AI-based computer vision technologies for occupational health and safety (OHS) monitoring tasks on industrial objects, specifically targeting deployment in resource-constrained systems. The core of the methodology enables the efficient use of CPU-based server devices by introducing two key improvements: a two-stage detection mechanism with dynamic Region of Interest (ROI) selection to significantly reduce the computational load on the primary object detection model, and a static background subtraction algorithm for pre-filtering the video stream and removing non- informative scene areas. A detailed analysis of the performance (in terms of processing speed for real-time capability) and accuracy of various configurations implementing this approach, based on models from the YOLO family, is conducted. A conceptual scheme for integrating the proposed optimization techniques into a typical video analytics pipeline is described, along with a methodology for creating and annotating a specialized dataset. The paper demonstrates that the developed methodology achieves an acceptable balance between violation detection accuracy and video stream processing speed necessary for real-time operation on CPUs, opening prospects for the wider adoption of intelligent safety systems in environments with limited computational resources.ru_RU
dc.language.isoenru_RU
dc.publisherUnited Institute of Informatics Problems of the National Academy of Sciences of Belarusru_RU
dc.subjectOccupational safetyru_RU
dc.subjectHealth and safetyru_RU
dc.subjectPersonal protective equipmentru_RU
dc.subjectPPEru_RU
dc.subjectComputer visionru_RU
dc.subjectYOLOru_RU
dc.subjectObject detectionru_RU
dc.subjectNeural network optimizationru_RU
dc.subjectEdge computingru_RU
dc.subjectIndustrial safetyru_RU
dc.subjectBackground subtractionru_RU
dc.subjectFocus of attentionru_RU
dc.subjectOptimization methodologyru_RU
dc.subjectVideo analyticsru_RU
dc.titleAn Approach to Resource-Efficient Optimization for Real-time Computer Vision-based OHS Monitoring on Resource-constrained Industrial Objectsru_RU
dc.typeArticleru_RU


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